This is the third major funding round for Cohesity, bringing the total investments in the company to more than $160 million
Source: BloombergMarketing may be a trillion-dollar industry, but its supply chain needs a makeover, says Microsoft's CMO.
Source: Ad ExchangerMicrosoft also announced Deep Learning and Machine Learning capabilities to support the next generation of enterprise-grade AI applications.
Source: BGRTen years ago, if you mentioned the term "artificial intelligence" in a boardroom there's a good chance you would have been laughed at. For most people it would bring to mind sentient, sci-fi machines such as 2001: A Space Odyssey's HAL or Star Trek's Data.
Source: ForbesThere has been a lot of interest in artificial intelligence and predictive learning systems - and with good reason. The systems provide a fast, powerful method to handle data analysis
Source: ForbesElement Data, Inc., a decision support software platform that harnesses artificial intelligence and machine learning has acquired the technology assets and team of PV Cube, a Seattle area start-up.
Source: PR NewswireFacebook's big bet on messenger bots was an oversell from the start. What's shaking out now is a more reserved and perhaps more useful idea of what a bot can be and how a business can use it.
Source: AD ExchangerMaluuba, a Microsoft company working towards general artificial intelligence, recently released a new open dialogue dataset based on booking a vacation - specifically, finding flights and a hotel.
Source: InfoqZvelo, the leading provider of categorization and malicious detection data for web pages, devices and traffic, today announced the immediate availability of the Comprehensive Page-Level Traffic (CPT) dataset.
Source: MarketwiredWolfram Research, Inc., creator of Mathematica, Wolfram|Alpha and the Wolfram Language, announces the integration of Wolfram technology with SolveBio, the operating system for precision medicine that enables biotech and pharmaceutical companies to leverage molecular information for therapeutic development.
Source: PR NewswireInnovation in data processing and machine learning technology
Source: Google Cloud PlatformIt can be said that an IT organization reflects the business from which it has grown. When it comes to the New York Times, this is definitely true. As a news organization, the company's collective journalistic head is always on the swivel, always racing towards the newest story.
Source: TheNewStack.Technology is gradually taking over workplaces and that is one of the reasons why 'human workers' are becoming redundant.
Source: BGRMicrosoft executives have revealed that they aim to have a "proto-commercial" DNA data storage system available in three years and hope to have an operational model in a decade. The eventual device will be around the size of a 1970s era Xerox Printer.
Source: FuturismCredit reference agency Experian hold around 3.6 petabytes of data from people all over the world. This makes them an authority for banks and other financial institutions who want to know whether we represent a good investment, when we come to them asking for money.
Source: ForbesGoogle, IBM, Microsoft and Amazon Web Services are all piling artificial intelligence capabilities onto their software stacks
Source: Computer WorldArtificial intelligence offers feds the "tantalizing possibility" of increased speed, enhanced quality and lower costs, a Deloitte report says.
Source: FedTechExploring and applying machine learning algorithms to datasets that are too large to fit into memory is pretty common.
Source: MachinelearningmasteryIn 1959, an IBM employee by the name of Arthur Samuel programmed a computer to play checkers against him. Over time, the program was able to collect data, strategise and win a game all by itself. And thus, machine learning was born.
Source: CSOWith the emergence of Artificial Intelligence (AI), Machine Learning (ML), Big Data, cloud computing and other concurrent new age technologies, the legacy IT companies and teams need to relook at their internal processes and structure.
Source: Financial ExpressFinancial services jobs go in and out of fashion. In 2001 equity research for internet companies was all the rage. In 2006, structuring collateralised debt obligations (CDOs) was the thing.
Source: efinancial CareersAccording to industry headlines, the answers to many challenges facing credit unions today lie deep within their member data.
Source: blog.co-opfsA year and a half ago, I dropped out of one of the best computer science programs in Canada. I started creating my own data science master's program using online resources.
Source: MediumGoogle Sheets is getting smarter today. After adding the machine learning-powered "Explore" feature last year, which lets you ask natural language questions about your data, it's now expanding this feature to also automatically build charts for you. This means you can now simply ask Sheets to give you a "bar chart for fidget spinner sales" and it will automatically build one for you.
Source: TCMLpAI can help deliver systems with more automation and less human intervention, but success requires a data strategy to deal with the complexity of real-world data.
Source: Gartner"Artificial intelligence (AI) and machine learning (ML) have rapidly matured over the years and are already the norm in many fields, helping companies deploy smart systems of engagement to improve efficiency, enhance security, gain insights, and deliver superior customer experiences," writes Aan Chauhan.
Source: CongnizantDemand for skilled data scientists continues to be sky-high, with IBM recently predicting that there will be a 28% increase in the number of employed data scientists in the next two years.
Source: ForbesDatabricks is giving users a set of new tools for big data processing with enhancements to Apache Spark. The new tools and features make it easier to do machine learning within Spark, process streaming data at high speeds, and run tasks in the cloud without provisioning servers.
Source: HOB TeamAlteryx, fresh off its IPO, introduces Alteryx Connect, a data catalog/governance product based off its previously undisclosed acquisition of Semanta. Alteryx is also announcing its acquisition of Yhat, a startup specializing in data science development, management, and deployment.
Source: ZDnetManagement teams often assume they can leapfrog best practices for basic data analytics by going directly to adopting artificial intelligence and other advanced technologies.
Source: HBRWhat's on the horizon for Google AdWords? Columnist Frederick Vallaeys provides a behind-the-scenes look at some new AdWords features from a presentation at Google Marketing Next.
Source: SearchenginelandTwo breaches in as many years. Is the trust gone? Alvaro Hoyos, the company's chief information security officer, answered key questions.
Source: ZDnetRecently, Nivida unveiled Volta, the most advanced data-center graphics-processing unit ever built. With 21.1 billion transistors and a massive 815 mm2 footprint, it will facilitate the next generation of artificial intelligence.
Source: ForbesMicrosoft's cloud-based virtual machine for big data analytics is now available in a version running on Windows Server 2016.
Source: EweekData science and data analytics: people working in the tech field or other related industries probably hear these terms all the time, often interchangeably.
Source: InsidebigdataUnderstanding machine learning & data science is easy. There are numerous open courses which you can take up right now and get started. But, acquiring in-depth knowledge of a subject requires extra effort.
Source: HOB TeamMachine learning algorithms can be divided into 3 broad categoriesâ??-â??supervised learning, unsupervised learning, and reinforcement learning.
Source: kdnuggetsWe believe in the power of information. We also believe in markets and capitalism as a force for good. The two are inexorably linked, because markets don't work well without open access to reliable data and information
Source: SSIR.orgArtificial Intelligence (AI) is one of the most transformative forces of our times. While there may be debate whether AI will transform our world in good or evil ways, something we can all agree on is that AI would be nothing without big data.
Source: ForbesTo actually use any of that information, data scientists have become more and more vital to companies - to analyse and interpret the huge amounts of data and turn it all into something structured and useful.
Source: ScienceAlertOne of the common problems people face in learning R is lack of a structured path. They don't know, from where to start, how to proceed, which track to choose?
Source: Analytics VidyaData science is just that - science. Specially trained individuals well-versed in how to break down big data sets and interpret their meaning are in high demand.
Source: TNWThere is more data out there than ever before, but organisations should be smart about how they use it.
Source: GulfnewsHow do Data Science and DevOps fit together? In this article, Richard Gall explains why integrating Data Science with your DevOps can lead to a better and smarter business.
Source: jaxenterThe skills of data experts are becoming outdated as the industry evolves. If you're looking to learn data science - quickly - then you're in luck.
Source: jaxenterIn the context of contemporary applications, it's hard to think of an application that doesn't use a database. From mobile to web to the desktop, every modern application relies on some form of a database.
Source: ForbesSince all of the libraries are open sourced, we have added commits, contributors count and other metrics from Github, which could be served as a proxy metrics for library popularity.
Source: KdnuggetsGoogle's Ground Truth team recently announced a new deep learning model for the automatic extraction of information from geo-located image files to improve Google Maps.
Source: InfoqScientists crunching numbers on infant deaths in the US are using data-analysis algorithms to try and find new ways to reduce the number of babies lost to SIDS each year, with Microsoft contributing free cloud hosting and software tools for their work.
Source: The StarSome people have relied on "common sense" to brand an entire religion as dangerous-but rigorous analysis proves they're wrong
Source: Scientific AmericanThink beyond the nosy neighbour to the corporations that want to utilise minutia of your life to sell products that you may or may not need. Corporations have always been interested in understanding consumer behaviour and been collecting data about users using their products or service.
Source: The HinduToday, Big Data gives us unprecedented insights and opportunities across all industries from healthcare to financial to manufacturing and more. But, it also raises concerns and questions that must be addressed.
Source: ForbesWhat's the one thing that makes a great data leader?
Source: Data-informedData Scientists are in big demand! We review career pathways, relevant data science skills, and how you can learn them at no cost.
Source: KDnuggetsSpring. Rejuvenation. Rebirth. Everything's blooming. And, of course, people want free ebooks. With that in mind, here's a list of 10 free machine learning and data science titles to get your spring reading started right.
Source: KDnuggetsFrom gaining the right skills to acing your first interview, these resources can help put you on the right track
Source: PCworldBurtch Works details the top 9 data science skills that potential data scientists must have to be competitive in this growing marketplace from the perspective of a recruiter.
Source: KDnuggetsCompositions created using database of well-known pop, classical and jazz artists
Source: GATechWhat are the top 5 skills needed to become a data scientist? originally appeared on Quora - the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: ForbesData scientists in the marketing world have something in common with the nerd characters on police-procedural TV shows, according to speakers at a DigitasLBi-hosted event in Singapore last week.
Source: Campaign AsiaAs data analytics matures from a science into a technology, companies are shifting their focus toward making products out of the advanced models generated by their data science organizations.
Source: A silicon ANGLEInterview: Tom Smith, managing director of the new body in the Office of National Statistics, says it can do a lot to support policy makers in understanding complex issues
Source: ukauthorityAttribution technology still has a long way to go, but hopefully these technologies make that journey quicker.
Source: IncThe growth of AI and large data sets pose great risks to privacy. Two top experts explain the issues to help your company manage this crucial part of the technology landscape.
Source: ZDnetThe race for artificial intelligence technology is on, and while tech giants like Google and Facebook snap up top talent to build out their own AI-powered products, a new startup has just raised a huge round of funding to help the rest of us
Source: TCData science is the theory and practice powering the data-driven transformations we are seeing across industry and society today. Artificial intelligence (AI), self-driving cars, and predictive analytics are just a few of the breakthroughs that have been made thanks to our ever-growing ability to collect and analyze data.
Source: Data InformedMachine Learning applications include evaluation of driver condition or driving scenario classification through data fusion from different external and internal sensors. We examine different algorithms used for self-driving cars.
Source: KDnuggetsFacebook has a huge amount of data that is available for you to explore, you can do many things with this data. I will be sharing my experience with you on how you can use the Facebook Graph API for analysis with Python.
Source: KDnuggetsLeaders sometimes ask questions that get in the way of solving the problem that really matters to them. We can learn a lot from a real-life example of two business titans.
Source: ForbesMongoDB is hosting its annual developer conference in Chicago this week and no good developer conference would be complete without a few product launches.
Source: cloud,developer,enterprise,tc,mongodb,databases,developersWHAT IS THE STATE OF SMART GOVERNMENT AND SMART CITIES TECHNOLOGY ADOPTION?
Source: FreebalanceHarvard will offer a Master of Science (SM) degree in Data Science beginning in fall of 2018. The new degree, under the joint academic leadership of the faculties of Computer Science in the Harvard John A. Paulson School of Engineering and Applied Sciences (SEAS), and of Statistics in the Faculty of Arts and Sciences (FAS), will train students in the rapidly growing field of data science.
Source: HBRUS- and Bangalore-based Julia Computing, a provider of open source language for data science and machine learning, has received $4.6 million (Rs 30 crore) in seed funding from US-based investment firms General Catalyst and Founder Collective.
Source: VCCData Science is a comparatively new domain which most of us is not thorough with, agreed?
Source: AirctoIDE stands for Integrated Development Environment. It's a coding tool which allows you to write, test and debug your code in an easier way, as they typically offer code completion or code insight by highlighting, resource management, debugging tools
Source: DatacampAI is defined by many terms that crop up everywhere and are often used interchangeably. Read through to better know the difference between AI, Machine Learning, and Deep Learning.
Source: EdgylabsStart with y. Concentrate on formalizing the predictive problem, building the workflow, and turning it into production rather than optimizing your predictive model. Once the former is done, the latter is easy.
Source: mediumImagine a business world where employees are faster and more productive - where they can make smarter decisions and have the time to focus on strategy and being creative. This is all a near-reality with continued breakthroughs in artificial intelligence (AI) capabilities. AI is at the tipping point of becoming the next great technological disruptor.
Source: SalesforceBy dispelling the myths surrounding this emerging technology, businesses will be able to realize its true potential.
Source: IT ProportalWith SmartAI, Datameer is addressing the last mile in putting machine learning to work in business intelligence.
Source: ZDnetRetail investors do not always have adequate time to research opportunities for making money. Fortunately, the rise of big data and artificial intelligence (AI) is helping individual investors make more informed investment choices.
Source: InvestopediaBig Data analytics sector in India is expected to witness eight-fold growth by 2025 - from the current $2 billion to reach $16 billion, say industry experts.
Source: NDTVSince February I have been working on a video course with Packt Publishing, and the course is now published.
Source: NTguardianThe influence and impact of machine learning can be seen in everything from our morning coffee orders to the online banking apps we use.
Source: DatanamiThe cyberthreat landscape evolves at breakneck speed. While cybercriminals are able to compromise a system in hours or minutes, the reaction of companies usually takes months or even years.
Source: PandasecurityWhat does it take to compete in a global arena in which retail and cloud are increasingly intertwined? Domain-specific data science and machine learning for the masses, according to Alibaba.
Source: ZDnetA lot of people reach out to me. They needs jobs. But they are asking about school.
Source: ForbesDataScience.com customers can now benefit from The Data Incubator's comprehensive data science training in the DataScience.com Platform.
Source: Global NewswireMost industries are struggling to find data science expertise, but Wall Street especially has particularly keen to hire in this area. Data has always been a big part of the finance industry, and over the last few years, top financial services firms have ramped up their spending, investing millions of dollars to recruit and train data scientists.
Source: Efinancial CareerAI, or artificial intelligence, has taken root in biotech. In this article, a contributor explores its newfound niches in the industry.
Source: LabiotechThere is no typecast for savvy AI businesses. They come in all sizes and represent an ever broadening swath of industry. Simply put, the era of artificial intelligence is remaking business as we know it.
Source: NVidiaComing soon: 61st World Statistics Congress Marrakech, TDWI Anaheim, ICML Sydney, KDD-2017 Halifax, JupyterCon NYC, Big Data Innovation Summit Boston, and many more.
Source: KDnuggetsWhat size do big things start? Small Machine learning (ML) may well be The Next Big Thing, but it has yet to register in mainstream enterprise adoption. While breathless prognosticators proclaim 50 per cent of organisations lining up to magically transform themselves in 2017 with ML, more canny observers put the number closer to 15 per cent. And that's being generous.
Source: TheregisterGoogle's plans a big research project aimed at making artificial intelligence more useful. The search giant debuted an initiative on Monday that brings together various Google researchers to study how people interact with software powered by AI technologies like machine learning.
Source: FortuneThere is a lot of excitement and some confusion across the ad industry around machine learning, and for good reason. The availability of cheap storage and processing has made sophisticated machine learning available to a much wider range of industries than what was available even five years ago. The media business has seen machine-learning solutions find homes in a wide variety of applications, from predicting how likely a user will click on an ad to classifying users in lookalike models and optimizing campaign delivery.
Source: AdexchangerThis course created by Data Weekends, Jose Portilla, and Francesco Mosconi is designed to provide a complete introduction to Deep Learning. It is aimed at beginners and intermediate programmers and data scientists who are familiar with Python and want to understand and apply Deep Learning techniques to a variety of problems.
Source: MediumSiddhartha Dalal got his introduction to probabilistic analysis in the wake of the 1986 Space Shuttle Challenger disaster.
Source: SiliconangleMachine learning with Big Data is, in many ways, different than "regular" machine learning. This informative image is helpful in identifying the steps in machine learning with Big Data, and how they fit together into a process of their own.
Source: KDnuggetsWant to be a data scientist? Third-level institutions and full-time education aren't the only way you can learn essential data science skills.
Source: SiliconrepublicThe chief data officer's next challenge may be to find storytellers who can explain machine learning for data science to decision-makers in the organization.
Source: TechtargetRight now, many data science jobs require a Ph.D. Here's how companies can help employees who lack advanced degrees get on this career track.
Source: TechrepublicSo, you want to build a data science team? Here's some stuff to think about. Before long, just like this stock photo, you'll have a team of weird orange people with big bulbous heads, who can sit around a table looking at an enormous hologram of a simple bar chart.
Source: EconsultancyIoT can enable collecting useful information which can then be used to identify and eliminate the inefficiencies in the system
Source: EntrepreneurArtificial intelligence-driven technology revolution is expected to impact all sectors. Some firms have already deployed AI solutions and are reaping the benefits
Source: LivemintArtificial intelligence (AI) enables Siri to recognise your question, Google to correct your spelling, and tools such as Kinect to track you as you move around the room.
Source: TheconversationIn their HBR Big Idea feature, Erik Brynjolfsson and Andrew McAfee argue that AI and machine learning will soon become "general-purpose technologies," as significant as electricity or the internal combustion engine. They represent a landmark change in our technical capabilities and will power the next wave of economic growth.
Source: HBRSo you have developed some base skills in programming, data visualization, data manipulation etc... And are looking for ways to apply those skills and build a data science portfolio?
Source: DatacampArtificial Intelligence is colossally hyped these days, but the dirty little secret is that it still has a long, long way to go. Sure, A.I. systems have mastered an array of games, from chess and Go to "Jeopardy" and poker, but the technology continues to struggle in the real world. Robots fall over while opening doors, prototype driverless cars frequently need human intervention, and nobody has yet designed a machine that can read reliably at the level of a sixth grader, let alone a college student. Computers that can educate themselves - a mark of true intelligence - remain a dream.
Source: NY TimesData science is complex. Let us help break it down for you in this bundle where you can learn everything a data scientist needs to know before jumping into it as a career.
Source: TechrepublicJuly 30 marks the United Nations' World Day Against Trafficking in Persons, a day focused on ending the criminal exploitation of children, women and men for forced labor or sex work
Source: ScientificamericanIn recent years, influencer marketing has established itself as a highly-effective method for brands to build and engage with audiences on social media. It is well-documented that influencers and their authentic content creation can help brands grab the attention of consumers and gain their trust, but the question has remained: Does influencer marketing actually directly impact sales at scale?
Source: ForbesCompared to the state-of-art, DeepSense provides an estimator with far smaller tracking error on the car tracking problem, and outperforms state-of-the-art algorithms on the HHAR and biometric user identification tasks by a large margin.
Source: AcolyerWell-established enterprises like retailers or manufacturing companies now have an abundance of data at their disposal. Unfortunately, merely possessing vast amounts of raw data does not lead directly to increased efficiency or the rapid development of new revenue streams. Instead, everyone must now figure out exactly how to make this data work for them.
Source: ComputerweeklyDemand for developers with data science skills continues to grow. Here's what you need to learn to break into a career in the field.
Source: TechrepublicMany aspiring data scientists focus on doing Kaggle competitions as a way to build their portfolios. Kaggle is an excellent way to practice, but it should only be one of many avenues you use to work on data science projects.
Source: DataquestAmazon's head of A.I. for its AWS cloud computing outfit, Matt Wood, sits down for a talk about how the company is popularizing machine learning and related tasks, and where the technology is headed in coming years.
Source: BarronsThe words artificial intelligence (AI), machine learning (ML) and data visualization are everywhere right now. Both AI and ML have gained an immense role in defining the business world and have especially influenced the way we define the customer experience.
Source: CustomerthinkDemand for this role: In most cases a machine learning engineer will partner with a data scientist so that their work will be synonymous with one another; therefore demand for these candidates arguably is extremely similar.
Source: Information ManagementThe technology is becoming commonplace in political campaigns, and some even claim it was crucial in delivering Donald Trump to the White House.
Source: IndependentRecently, I posted an interview conducted with Wes Nichols, the former CEO of MarketShare, on the ways in which data and analytics are impacting organizations (see here for the article and video). Below, I share Nichols' interesting perspective on how these changes will impact the future of marketing.
Source: ForbesThere's no doubt chatbots are forever changing the way businesses operate and the way that marketers approach marketing. Not only do these virtual assistants have the ability to impact almost all aspects of a company, they're also great customer service tools that can provide assistance around the clock.
Source: EntrepreneurMachine Learning and AI are often heralded as the future of, well, every industry ever. But what about the future of Machine Learning itself? Sebastian Raschka, applied machine learning and deep learning researcher at Michigan State University and the author of Packt's best-selling book Python Machine Learning, takes a look at what's changed the most in the last few years and what's next on the horizon - here's a hint, it's not robots taking over the world.
Source: CBRAs the integration of Artificial Intelligence, Machine Learning and Big Data in the workplace is becoming the new norm, concerns are increasing over how the technology could affect employee performance, job security and the adaptation and reliance of technology in the legal industry.
Source: Inside CounselBack in the Old Days, you used to have to hire a bunch of mathematicians to crunch numbers if you wanted to extrapolate insights from your data. Not anymore.
Source: The Financial BrandEven though Walmart was founded in 1962, it's on the cutting edge when it comes to transforming retail operations and customer experience by using machine learning, the Internet of Things (IoT) and Big Data. In recent years, its patent applications, position as the second largest online retailer and investment in retail tech and innovation are just a few reasons they are among the retail leaders evolving to take advantage of tech to build their business and provide better service to their customers.
Source: ForbesAlthough the laboratory earthquakes provide good simulations, its a very simplistic model. Real seismic data is a lot messier. There is ambient noise produced by human activity and the environment. Sounds from nearby faults also interfere with the signal pattern the researchers are looking for, making predictions more difficult.
Source: The RegisterWe produce 2.5 exabytes of data every day. That is equivalent to 250,000 Libraries of Congress or the content of 5 million laptops. Every minute of every day 3.2 billion global internet users continue to feed the data banks with 9,722 pins on Pinterest, 347,222 tweets, 4.2 million Facebook likes plus ALL the other data we create by taking pictures and videos, saving documents, opening accounts and more.
Source: ForbesIn retail, supply chain efficiency is essential. Inventory management, picking, packing and shipping are all time and resource-intensive processes which can have dramatic impact on a business's bottom line.
Source: ForbesThe e-commerce industry has continued to gain traction in Hong Kong in recent years. About 88 percent of Hong Kong people shopped online last year. Most shoppers were aged below 30, according to a report from Nielsen Corp.
Source: ejinsightCiting the need for jobs of the future, Gov. Andrew Cuomo on Thursday announced $22.5 million in state support for the creation of a Rochester Data Science Consortium on the University of Rochester campus.
Source: DemocratandchronicleThe most valuable contributors to machine learning are often generalists. Especially in 2017, there is a lot of hype around particular machine learning methods. Candidates who have learned how to use a certain deep learning package in an online course and are applying to jobs remind me of people in the 1990s, when there was similar hype around the web, who read the "Learn VBScript in 20 Days" kinds of books instead of learning the fundamentals of computer science.
Source: HuffPostSplunk has always been data central for IT operations info, but as the logs fill up with ever-increasing amounts of data, it has become impossible for humans to keep up. Recognizing this, Splunk started building in machine learning and artificial intelligence last year, and this week they are enhancing those capabilities to make it easier to surface the data that's most critical.
Source: Tech CrunchThe state government on Wednesday announced it will establish a Centre of Excellence for Data Science and Artificial Intelligence (CoE-DS&AI), with Nasscom as the programme and implementation partner.
Source: ET TechThere are many differing opinions on the impact of artificial intelligence (AI) on our worklives, from dazzling to dystopian.
Source: Forbes"Data wrangling" was an interesting phrase to hear in the machine learning (ML) presentations at Microsoft Ignite. Interesting because data wrangling is from business intelligence (BI), not from artificial intelligence (AI). Microsoft understands ML incorporates concepts from both disciplines. Further discussions point to another key point: Microsoft understands that business-to-business (B2B) is just as fertile for ML as business-to-consumer (B2C).
Source: ForbesArtificial intelligence (AI) is quickly becoming the next big thing for tech companies. Chipmakers, software companies, tech conglomerates, and hardware makers are all betting that AI will make our cars safer and our cities more efficient, help us find disease-fighting drugs faster, and improve our lives overall.
Source: The Motley FoolGoogle acquired the British artificial-intelligence startup DeepMind in 2014 for a reported £400 million (roughly $525 million), a company its cofounder Demis Hassabis once described as aiming at "solving intelligence, and then using that to solve everything else.
Source: QZA good question to start with is, what is machine learning? Machine learning is a subject area of data science, probably the one that gets talked about most. It is also a branch of artificial intelligence (AI). Machine learning allows computers to be programmed so that they can learn from data themselves. It involves developing c
Source: Training ZoneThe big data tsunami bears exciting new profit potential; it also brings with it some daunting challenges, thanks to the General Data Protection Regulation's strict privacy rules, set to be enforced next year. Machine learning is the best weapon businesses have to maximize the bounty of big data and ward off the threats, according to Murthy Mathiprakasam (pictured), director of product marketing at Informatica Corp.
Source: siliconangleWe are living in a world of data overload. From behavioral analytics to customer preferences, businesses now have so much data at their fingertips that they're unable to process and consume all of it in a meaningful way. This is where the magic of machine learning comes in.
Source: Venture Beat"Data wrangling" was an interesting phrase to hear in the machine learning (ML) presentations at Microsoft Ignite. Interesting because data wrangling is from business intelligence (BI), not from artificial intelligence (AI). Microsoft understands ML incorporates concepts from both disciplines.
Source: ForbesWhat if companies managed their data like they manage their money? By definition, businesses manage money as a strategic asset, and the tools available to CFOs are well-defined. Ask any CIO how much money they have, where it's coming from and going to and they'll tell you right away - down to the penny.
Source: itproportalRazorthink Inc., an innovator in Artificial Intelligence Data Science for the Enterprise, today announced Razorthink Big Brain, the first Deep Learning Data Science Platform that automates the data preparation, modeling, evaluation and deployment of Deep Learning solutions at scale. With Razorthink Big Brain, organizations can quickly generate Expert AIs that supercharge their data science efforts with superior big data predictive analytics and help businesses avoid blind spots by 'knowing what they don't know.'
Source: Globe News WireThe artificial intelligence that will power future robots and content filters now has a new resource for understanding humans.
Source: QZData science is a vast, fascinating field. Analysis of datasets can be applied to multitudes of areas to improve people's quality of life. It would be difficult to find a better application of data science changing people's lives than Berlin-based menstrual and ovulation tracker Clue.
Source: Silicon RepublicOf course, this follows the basic laws of economics - supply and demand. The demand for data science is very high, while the supply is too low.
Source: ForbesThe Delhi Police, by 2020, aspires to adopt "technology based policing" by using smart policing, artificial intelligence, and self-learning systems among other advanced technologies, it was announced on Friday.
Source: FirstPostAlpha Go Zero is changing the game for how we solve big problems.
Source: IncAccording to Google Trends, interest in the term 'machine learning' (ML) has increased over 300% since 2013. The world has watched ML go from the realm of a relatively small number of data scientists to the mainstream of analysis and business. And while this has resulted in a plethora of innovations and improvements among our customers and for organisations worldwide, it's also provoked reactions ranging from curiosity to anxiety among people everywhere.
Source: IB TimesBusinesses need to look for a diverse range of backgrounds, skills and experiences when hiring their analytics teams.
Source: Which-50An Interview with Sergey Nikolenko, Chief Scientist of Neuromation, a Blockchain for Artificial Intelligence company.
Source: NextbigfutureWhile most of the attention for how artificial intelligence (AI), machine learning and big data can impact companies is focused on the business to consumer (B2C) space, business to business (B2B) companies need to pay attention or they risk their future success.
Source: ForbesWhat is the role of machine learning in cyber security or networking security? originally appeared on Quora - the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HuffingtonpostWhat is the role of machine learning in cyber security or networking security? originally appeared on Quora - the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HuffingtonpostUsually when a new technology starts getting noticed, the subsequent hype in the industry is inevitable. The hype is partly created by the vendor and consulting community looking for new business, partly created by professionals in the industry wanting to keep up and comment on the latest trends, partly created by companies with the ambition to be seen moving with the times and becoming early adopters.
Source: CIOData lakes didn't quite pan out so now it's all about an abstraction layer and machine learning to save the day. Hopefully, machine learning can cleanse your data on the fly since humans have proved repeatedly they aren't meticulous enough.
Source: ZD NetThe words artificial intelligence often conjure up a sense of fear and apprehension. Fear for the unknown possibilities of AI, fear for the AI-fueled dystopian images brought about by movies like The Terminator, and most practically, fear for the possibility that AI will someday take our jobs.
Source: VBInfosys is seeking to leverage artificial intelligence and data analytics to help win more business from its own Fortune 500 clients and help run their businesses better
Source: MintDoes it seem like the ability to find, hire and retain data scientists is a losing battle? Is spending $500.000-plus per year for a data scientist worth it? What is a data scientist anyway?
Source: IMWhile quick and dirty Google Trends is definitely not data science it can be useful for a sniff test. I was working on a client project today, when I thought I would look at search interest over time. Rails- we�¢??d expect to be tailing off a bit.
Source: Enterprise IrregularsThe combination of big data and machine learning can unlock the value of data you already have to gain a competitive edge for your business.
Source: IoT For AllThe proliferation of digital technology in the last two decades has brought with it a slew of various cyber-threats, especially cybercrime, the most common example of which is data breaches.
Source: The BattIn an era of great uncertainty and disruption for automotive manufacturers, Mercedes and its parent company Daimler are jumping in full throttle as leaders of the 4th Industrial Revolution.
Source: ForbesIn an era of great uncertainty and disruption for automotive manufacturers, Mercedes and its parent company Daimler are jumping in full throttle as leaders of the 4th Industrial Revolution.
Source: ForbesIn this special guest feature, Kevin Safford, Sr. Director of Engineering for Umbel offers a no-nonsense look at how to answer the proverbial question "How can I become a data scientist." To understand how to become a data scientist, it's best to get on the same page on what data science is.
Source: Inside BigdataThe hope for the next generation of businesses is that the large quantities of data, which is accessible to the masses, can help in planning everything from better decision making to executing better marketing campaigns.
Source: TechMachine learning and big data are having a positive impact on customer experience, as well as producing extensive benefits for banks.
Source: Information AgeTech is facing a talent gap, in the absence of formal data science degrees at major universities. The assumption that only computer science majors have a place in the new economy is a "very shallow view," CA Technologies CEO Mike Gregoire said.
Source: CNBCTech companies are constantly looking for an edge over the competition, and that usually means digging deep into data. That's good news for those who are mathematically inclined. If that sounds like you and you're looking to break into the Chicago tech scene, these open roles would be a good place to start.
Source: BuiltinchicagoGiven that data was held in such high regard even in the late 19th century, it is no surprise that this would be the case in the age of Internet and information overload. In fact, simply having data will no longer cut it; you need to know how to interpret it and how to derive actionable insights from it.
Source: The HinduCoupled with technology, data can transform the way businesses operate to stay ahead of their competitors.
Source: Daily NationIt doesn't have a super-sexy moniker like KRACK or Heartbleed, but the spectre of the insider threat looms large for organisations, and has done so for as long as electricity, silicon, and computing have been paired up to store information.
Source: ZDNetAccern, a New York-based data science start-up has today closed a $2.1 million Pre-Series A funding round led by private investors, including 26 Ventures' Managing Partner, Moshe Neuman.
Source: ForbesThe skill most required today is the ability to come up with fundamental innovations in machine learning, and implement them to solve practical problems
Source: Hindustan TimesDJ Patil, the chief data scientist under President Barack Obama, has joined Venrock Capital as an adviser. Patil has long been a proponent of using data science and artificial intelligence to solve some of the nation's biggest problems around areas including medicine, policing and the criminal justice system.
Source: TCHiring data scientists is easier said than done -- so should you try to train current employees in data science skills? That depends on your company's needs, writes one analytics expert.
Source: Search Business AnalyticsThe age of Big Data has reached an all new high as disruptive and innovative digital technologies push businesses to adapt quickly in a rapidly changing consumer market.
Source: CXO TodayHackers stole the personal data of 57 million customers and drivers from Uber Technologies Inc., a massive breach that the company concealed for more than a year. This week, the ride-hailing company ousted Joe Sullivan, chief security officer, and one of his deputies for their roles in keeping the hack under wraps.
Source: The Jakarta PostReally you want to upgrade your skills with the best Data Analytics, Development courses, to stand out in your industry? Now Big data, Data Science, Machine Learning, Deep Learning, Artificial Intelligence (AI), Analytics, Python, R, r-stats are the most trending and highly demanding subject in every sector for almost every industry.
Source: HOB TeamReally you want to upgrade your skills with the best Data Analytics , Development courses , to standout in your industry? Now Big data, Data Science, Machine Learning, Deep Learning, Artificial Intelligence (AI), Analytics, Python, R, r-stats are the most trending and highly demanding subject in every sector for almost every industry.
Source: HOB TeamEvery industry can benefit from Big Data, IoT and AI, and that includes brewers. Dutch brewer Heineken has been a worldwide brewing leader for the last 150 years.
Source: ForbesWhile all the attention is on the data scientists, it's market research where the really interesting work is says Ryan Howard.
Source: RESEARCHLIVEMachine learning is taking a big leap in Big Data stream. Today, Google predicts that you should leave now to catch a flight and Amazon recommends a book that you should read- are a few of the many machine learning usage instances that we come across in our lives daily.
Source: CIOLMachine learning is a buzzword in the technology world right now, and for good reason: It represents a major step forward in how computers can learn.
Source: ForbesDeep learning can be a vital supplementary tool for cybersecurity.
Source: CSO OnlineAmong the biggest challenges CMOs-and all marketers- face is the transformation of data into actionable insights. Consequently, it's one of the hottest topics CMOs talk about (see here).
Source: ForbesHealthcare outpaced all other industries in job growth for freelancers while finishing second to staffing when it comes to non-freelancers.
Source: Health Care IT NewsArtificial intelligence and big data have formed a truly symbiotic relationship, and they need each other to ring to fruition what both are promising. If there are any lingering doubts that the fates of artificial intelligence and big data are intertwined, consider these recent quotes from two highly regarded thought leaders in this space:
Source: RTInsightsArtificial intelligence and big data have formed a truly symbiotic relationship, and they need each other to ring to fruition what both are promising. If there are any lingering doubts that the fates of artificial intelligence and big data are intertwined, consider these recent quotes from two highly regarded thought leaders in this space:
Source: RTInsightsArtificial intelligence is starting to impact nearly every aspect of our daily lives. Machine-learning algorithms, the technology behind contemporary AI, determine what content appears on our Facebook feed and what results are returned when we conduct a Google search. They power product recommendations on Amazon and Netflix, determine airline or event ticket pricing, and influence who receives marketing communications based on likelihood to buy a new product or cancel a service.
Source: Maclean'sThere has been an increased appetite towards the adoption of artificial intelligence (AI) by Indian companies.This, in turn, may spike organisation spends on this tech, over the next 18 months, says an Intel India commissioned report, undertaken by the International Data Corporation (IDC)
Source: TOIMachine learning engineers, data scientists, and Big Data engineers are among the top emerging jobs in technology. This is based off of a recently released report from LinkedIn.
Source: SD TimesAmazon Web Services (AWS) which is the cloud computing arm of Amazon, plans to get into Over-the-top (OTT) content providers market of India with their data analytics & artificial intelligence platform. Bikram Bedi, head of India region, AWS said that globally, and in India, media & entertainment has been a huge focus of the company. They work with OTT platforms or linear TV platforms like Voot, Hotstar, Netflix, Sony, Amazon Prime, Tata Sky etc.
Source: HOT TeamIndian AI Startups Raised About $87.85 Mn In 2017
Source: Inc42In the tech industry, new skills and roles emerge faster than traditional education can keep up with. A recent example is the field of data science and the associated profession, Data Scientist.
Source: CodementorData visualization is the presentation of quantitative information in a graphical form. In other words, data visualizations turn large and small datasets into visuals that are easier for the human brain to understand and process.
Source: HOBLayoffs and hiring freezes in Indian IT are likely to continue in 2018, but it's not as hopeless as it seems.
Source: QZThe year 2018 will see a sharp increase in demand for professionals with skills in emerging technologies such as Artificial Intelligence (AI) and machine learning, even as people with capabilities in Big Data and Analytics will continue to be the most sought after by companies across sectors, say sources in the recruitment industry.
Source: The Hindu Business LineArtificial intelligence (AI) and its subset, cognitive computing, have been subject to a fair share of debates, with concerns around machines overtaking, or maybe even replacing, the human workforce.
Source: ForbesAccenture hosted an AI, Data Science & Big Data Open House at The Dock to showcase the data and analytics work it does, and open up a discussion about the challenges it faces in finding data-driven solutions.
Source: Silicon RepublicAutomation, machine learning and other emerging technologies have made it necessary for IT employees to learn new skills.
Source: NDTVConsultants who partner with data scientists can use the power of big data to help sell their expert advice. Find out pitfalls to avoid in this partnership.
Source: Tech RepublicDespite AI's promise across many industries, some companies still face implementation challenges.
Source: Tech RepublicThe incredible breakthroughs we saw in 2017 for deep learning will carry over in a very powerful way in 2018.
Source: venturebeatLike other prominent AI researchers, the Nvidia team believes the techniques that drive this project will continue to improve in the months and years to come, generating significantly larger and more complex images.
Source: economictimes.indiatimes.comLike other prominent AI researchers, the Nvidia team believes the techniques that drive this project will continue to improve in the months and years to come, generating significantly larger and more complex images.
Source: ETA new article in Science talks about the impact of machine learning advancements on labor demands and the economy.
Source: newsclickVerizon wants to give its enterprise customers more tools to automate threat detections on networks.
Source: ZdnetTesla has become a household name as a leader and pioneer in the electric vehicle market, but it also manufactures and sells advanced battery and solar panel technology.
Source: ForbesHow diverse will a lucrative, growing field like data science be in the future?
Source: ForbesIs data science too easy? originally appeared on Quora: the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: ForbesThe answer to this question depends to a great extent on the role/industry/company combination. However, there are few general remarks that can be made. To start with, it is very important to complete an internship rather than do an "ML related summer research project" unless that research is done with respect to a lab at a university
Source: HOBMachine Learning Engineers, Data Scientists, and Big Data Engineers rank among the top emerging jobs on LinkedIn. Data scientist roles have grown over 650% since 2012.
Source: Enterprise IrregularsMachine Learning Engineers, Data Scientists, and Big Data Engineers rank among the top emerging jobs on LinkedIn.
Source: Linkedin BlogWith digital transformation comes the daunting task of preparing a workforce for technologies like Big Data, Cloud, Artificial Intelligence (AI) and Internet of Things (IoT) that can address the massive demand coming from governments and businesses in India.
Source: EconomictimesA lower barrier to entry and a spike in the number of pilot projects involving machine learning will lead to various industries doubling its implementation this year and again in 2020, according to Deloitte Canada.
Source: ITbusiness.caActor Rajinikanth's announcement on Sunday of his plans to launch a political party may not be just a whimsical statement to buy peace with lakhs of his fans with growing aspirations. He had been doing a lot of homework and much more
Source: Times of IndiaThe company said reskilling empowers Tech Mahindra associates with much needed learning opportunities to enhance their careers and stay relevant in the Digital Age.
Source: Economictimes"Han the Robot" waits on stage before a discussion about the future of humanity in a demonstration of artificial intelligence at the RISE Technology Conference in Hong Kong on July 12, 2017. A new simulation of advanced AI reveals what society might look like if a superintelligence is introduced.
Source: NewsweekInstead of rendering humans not as important in the workplace, AI will actually make us more capable and useful, with automated solutions freeing up more of our time and talent for higher-value thinking and problem solving, strategizing and creating innovative solutions.
Source: BetanewsAs AI makes more resources more widely available, we will find less meaning in material wealth and more value in the activities that are uniquely human.
Source: EdweekThe core of most modern Machine Learning (ML) systems is automated neural networks (ANNs). The training of ANN's require large data sets.
Source: ForbesThese startups are applying artificial intelligence techniques to business intelligence, big data, cybersecurity, APM, autonomous vehicles, healthcare and more.
Source: DatamationArtificial Intelligence (AI) forms part of the Fourth Industrial Revolution, which is expected to fundamentally alter the way people live. We are in the midst of this revolution, and its end result is unknown.
Source: MediaupdateSuch is the speed of technological change that research shows four out of five executives feel overwhelmed and underprepared for the challenges of the next five years. Hardly surprising - for some, the next five years will see more change than the last 20.
Source: The DrumMachine learning is a fundamentally new technology that can create immense value to humankind. At the same time, it will challenge society. Not to try to understand how it works would be irresponsible.
Source: blog.networks.nokiaA start-up specialising in business-to-business payments is to open a development centre in Glasgow, creating 37 data science jobs in the process.
Source: ScotmanBennett Borden, chief data scientist at the Philadelphia firm of Drinker, Biddle & Reath, discusses his take on the evolution of legal analytics.
Source: Law.comA deep neural network model developed by Alibaba has scored higher than humans in a reading comprehension test, paving the way for bots to replace people in customer service jobs
Source: ScmpMachine Learning (ML) is coming into its own, with a growing recognition that ML can play a key role in a wide range of critical applications, such as data mining, natural language processing, image recognition, and expert systems.
Source: ToptalThousands of students and technology enthusiasts from Mumbai experienced Artificial Intelligence (AI) for the first time after humanoid Sophia 'spoke' at Indian Institute of Technology Bombay (IIT-B) on New Year's Eve.
Source: HindustantimesThe program is the first-of-its-kind that offers industry-recognized certification in Management Program in Data Visualization and Executive Program in Big Data and Machine Learning.
Source: AninewsOver the next decade, artificial intelligence will have a profound impact on all industries, introducing efficiencies and innovative catalysts.
Source: MorningstarImaging analytics backed by machine learning can accurately predict renal survival time in patients with chronic kidney disease.
Source: HealthitanalyticsArtificial intelligence and machine learning are eating up workloads at IT help desks, in cybersecurity, and other IT tasks, stirring significant concern over the long-term impact AI will have on jobs even in the IT industry.
Source: ItworldSee how big data and cloud computing can be used together to manage the enormous amounts of data that are being generated on a daily basis.
Source: DzoneIt is largely data that has determined success, failure and change in the insurance business. However, today is different. The advent of big data technology, advanced data analytics & machine learning are changing the game entirely.
Source: HOBJust consider the fact, In an average winter, Kentucky's Department of Transportation spend somewhere between $45 million to $75 million on snow removal & road salting. However, during the harsh winter of 2014-15
Source: HOBData protection platforms are a key element of data supply chains.Yet data supply chains present unique challenges.
Source: ForbesArtificial intelligence (AI) is rapidly advancing, thanks to ever-more-powerful computing, massive growth in the availability of digital data and increasingly sophisticated algorithms. The world's largest technology firms are investing billions to develop their AI capabilities, and companies across industries, from travel to real estate to fashion, are racing to bring AI-enabled services to market.
Source: BSRAnyone who is plugged into the tech world knows that AI and big data is big business right now. Our technological ability to process and analyze large troves of data grows every year, unlocking new doors at every turn.
Source: ForbesThere are new technologies being introduced everyday and regular advances in managing and utilizing consumer data is also happening. Resultantly, it is becoming harder to stay up to date with all of them. Technology is moving faster than marketers can figure how best to make use of it.
Source: HOBAI-enhanced real estate industry could also mean agents advertising homes using virtual reality, where users can experience a home just like they experienced a new BMW on Snapchat, interacting with the property through the smartphone in their hands.
Source: ForbesArtificial intelligence can help synthesize and analyze the large volumes of information provided by big data initiatives. The two are different, but they work well together.
Source: Tech TargetResults from the Kaggle State of Data Science and Machine Learning survey of data professionals revealed that job satisfaction varies widely across job titles. Data professionals who reported the highest level of job satisfaction were: 1) Machine Learning Engineers, 2) Data Scientists and 3) Predictive Modeler. Data professionals who reported the lowest level of job satisfaction were: 1) Engineers, 2) DBA/Database Engineers and 3) Programmers.
Source: CustomerthinkIt's been a decade since D.J. Patil, LinkedIn's former head of data products, coined the term "data science." And already there are thousands of data scientists working in different companies.
Source: TechgenixMachine Learning Engineer is now the fastest-growing job position in the U.S. according to LinkedIn's 2017 U.S. Emerging Jobs Report.
Source: StanduplyData scientists - or people who hope to become one - are collecting a lot of data about how great it is to be a data scientist, thanks to another list of the Best Jobs in America from Glassdoor.
Source: GeekwireInterviews are scary as shit. You sit across the table from someone who has the power to grant you income and measure of security. They hold your future in their hands. You have to make them like you, trust you, think you are smart.
Source: Github.ioIt is a question that perplexes many an upcoming research student - which IIT is best suited for machine learning and data science research. Globally and on home turf, IITs are recognized as Tier-1 engineering institutions that produce a steady stream of talent in computer science, software engineering, Database and Information Systems and other related domains.
Source: HOBWelcome back to another glorious episode of CTRL+T. This week, Henry Pickavet and I explore Amazon's new cashier-less stores that promise no waiting in line - except to get in - and Uber's newest C-level executive hire.
Source: TCArtificial Intelligence (AI) should be used to solve local problems with the help of global technology, said IT minister KT Rama Rao. The minister, who headed a delegation at the World Economic Forum (WEF) 2018, spoke at a session on "Global Tech and Local Solutions: Artificial Intelligence" in Davos on Friday.
Source: TOIToday, the importance of machine learning and big data to businesses cannot be overemphasized; both are revolutionizing business operations and consistently providing lots of new opportunities.
Source: EntrepreneurBusinesses have been relying on search and big data analytics for many years to gain insight into their data. In recent years, these technologies have evolved rapidly and now incorporate machine learning and artificial intelligence,
Source: CMSWire"We need to look to the past in the face of modern innovations in machine learning, robotics, artificial intelligence, big data, and beyond," says the economist.
Source: MIT EduThe Australian Securities Exchange (ASX) has published its financial results for the first half of the year. The results showed AU$230.5 million in after-tax profit and an increase of AU$11.1 million over the year.
Source: HOBWhen Terah Lyons arrives at the Flywheel Coffee Roasters in San Francisco's Haight-Ashbury, she is greeted so enthusiastically that she laughs with surprise. But this can't have been the first such welcome. Even if you don't know who she is, the ease and poise with which she walks and the warmth of her smile make it hard not to be struck by her presence. And as if on cue, from the speaker overhead comes Alicia Keys' hit song "You Don't Know My Name."
Source: OzyThe biggest event on the data science community calendar is the one that showcases women in the field.
Source: ForbesA recent survey of over 16,000 data professionals showed that the most used platforms/resources included Kaggle, Online courses and Stack Overflow Q&A.
Source: BusinessoverbroadwayUniversity of Michigan-Ann Arbor, University of London, University of Illinois-Urbana Champaign, Imperial College London, and Arizona State University partner with Coursera to build online degrees of the future
Source: Business WireCoders and job aspirants alike are making a beeline to data science training shops in Bengaluru and Hyderabad, and to open online courses, in the hopes of updating their skills and landing jobs with comfortable salaries. But is the training enough?
Source: LivemintBased on historical data and accurately predicting some patterns out of it then, Data science comes into the picture. Data Science is the data driven decision making and building business strategies based on data analysis by removing any manual or judgemental error. Data Science is everywhere and here is the rescue for how to be a data scientist.
Source: HOBData science is one of the most lucrative fields to work in today. Learn the basics and get a fatter paycheck with this machine learning class.
Source: DailydotCloudera, Inc., (NYSE: CLDR), the modern platform for machine learning and analytics, optimized for the cloud, announced Cloudera Altus with SDX, the first machine learning and analytics Platform-as-a-Service (PaaS), built with a shared data catalog providing the business context of that data.
Source: PR NewswireWe live in a world with unprecedented amounts of stats, facts, and figures, and it's slightly overwhelming. And in order to make that data useful, companies need to hire analysts who know how to sift through it and find meaningful patterns. According to GlassDoor, a typical data scientist earns about $120,000 per year, meaning this is the kind of career that can get you living that good life.
Source: MashableRelease 5.1 of Anaconda, the data science and machine learning platform, now includes Visual Studio Code as an IDE. This is part of a wider collaborative effort between Anaconda Inc. and Microsoft.
Source: InfoqMachine learning can drive tangible business value for a wide range of industries - but only if it is actually put to use. Despite the many machine learning discoveries being made by academics, new research papers showing what is possible, and an increasing amount of data available, companies are struggling to deploy machine learning to solve real business problems.
Source: HBREmployer demand for AI-related roles has more than doubled over the past three years, according to Indeed.
Source: Tech RepublicPreparing for an interview is not easy - naturally there is a large amount of uncertainty regarding the data science interview questions you will be asked. No matter how much work experience or technical skill you have, an interviewer can throw you off with a set of questions that you didn't expect. For a data science interview, an interviewer will ask questions spanning a wide range of topics, requiring strong technical knowledge and communication skills from the part of the interviewee. Your statistics, programming, and data modeling skills will be put to the test through a variety of questions and question styles - intentionally designed to keep you on your feet and force you to demonstrate how you operate under pressure. Preparation is a major key to success when in pursuit of a career in data science.
Source: SpringboardIt's undeniable-data science is one of the fastest growing fields in the world today, and shows no signs of slowing down. Because of that, it's becoming increasingly important to study and understand the professionals who make up this field, and the ways they navigate it.
Source: SpringboardLinkedIn's 2017 U.S. Emerging Jobs Report-fittingly created with the power of data science-lists data science roles as one of the top emerging positions in the U.S. today, with 6.5X growth over the last five years.
Source: SpringboradCracking any interview requires preparation and in the case of data science it is not restricted to performing well on the big day alone. An aspiring data scientist is expected to prepare across multiple fronts. Here, we provide you with a insight into the levels of preparation required and how to go about it.
Source: HOBIt's as good a time as any to keep yourself updated - especially for those who are in the ever-changing technology field. If you're interested in, or working as a professional in Data Science, Machine Learning and allied fields, we've compiled a list of top 11 books that are available free that you must catch up on gloomy rainy days.
Source: HOBData science requires the effective application of skills in a variety of machine learning areas and techniques. A recent survey by Kaggle, however, revealed that a limited number of data professionals possess competency in advanced machine learning skills.
Source: Businessover broadwayIn a joint initiative with Google and Udacity, Bertelsmann, the international media, services and education company, is inviting the people 18 and older to apply for its "Udacity Data Science Scholarship Program," in which the company will provide 15,000 three-month Udacity online courses in descriptive statistics.
Source: HOBSpecial thanks to Michael Shepherd, AI Research Strategist, Dell EMC Services, for his co-authorship. Learn more about Michael at the bottom of this post.
Source: Linkedin PulseTop machine learning writers on Quora give their advice on learning machine learning, including specific resources, quotes, and personal insights, along with some extra nuggets of information.
Source: kdnuggets.Here is a great collection of eBooks written on the topics of Data Science, Business Analytics, Data Mining, Big Data, Machine Learning, Algorithms, Data Science Tools, and Programming Languages for Data Science
Source: KdnuggetMachine Learning, The New Frontier In Data Science The ability to draw insight from massive streams of data is becoming a competitive differentiator for enterprises. Gartner evaluated software vendors offering products that allow development and deployment of the data science workloads that deliver that insight.
Source: CRNIn this article, I clarify the various roles of the data scientist, and how data science compares and overlaps with related fields such as machine learning, deep learning, AI, statistics, IoT, operations research, and applied mathematics.
Source: DSCMany people new to data science might believe that this field is just about R, Python, Hadoop, SQL, and traditional machine learning techniques or statistical modeling. Below you will find fundamental articles that show how modern, broad and deep the field is.
Source: DSCAre you a Data Scientist looking for a Job? Are you a Recruiter looking for a Data Scientist? If you answered yes or NO to this questions you need to read this.
Source: KdnuggetHere are our 6 predictions for data science, machine learning, and AI for 2018. Some are fast track and potentially disruptive, some take the hype off over blown claims.
Source: DSCNothing takes the place of meaningful and substantive study, but these cheat sheets (that's really not a great term for them) are a handy reference in a pinch or for reinforcing particular ideas. All images link back to the cheat sheets in their original locations.
Source: KdnuggetWhat better way to enjoy this spring weather than with some free machine learning and data science ebooks? Right? Right? Here is a quick collection of such books to start your fair weather study off on the right foot. The list begins with a base of statistics, moves on to machine learning foundations, progresses to a few bigger picture titles, has a quick look at an advanced topic or 2, and ends off with something that brings it all together. A mix of classic and contemporary titles, hopefully you find something new (to you) and of interest here.
Source: KdnuggetIn this article, we will compare the most commonly used platforms and analyze their main features to help you choose one or several platforms that will provide indispensable aid for your work communication.
Source: KdnuugetFor your convenience, we have prepared a comprehensive overview of the most important libraries used to perform machine learning and Data Science tasks in Scala.
Source: KdnuggetAre you looking to get a real handle on the career paths available in "Data Science" and "Big Data?" Read this article for insight on where to look to sharpen the required entry-level skills.
Source: KdnuggetWhat do you think of this year's predictions? Do you see any new tools on the horizon, or do you believe data science popularity is due for a reckoning of sorts?
Source: KdnuggetWhat do you think of this year's predictions? Do you see any new tools on the horizon, or do you believe data science popularity is due for a reckoning of sorts?
Source: KdnuggetStrong math understanding, computing skills, critical thinking and presentations skills provide a strong foundation for a career in Data Science.
Source: KdnuggetDeep Learning gets more and more traction. It basically focuses on one section of Machine Learning: Artificial Neural Networks. This article explains why Deep Learning is a game changer in analytics, when to use it, and how Visual Analytics allows business analysts to leverage the analytic models built by a (citizen) data scientist.
Source: DSCFor the 2018 international women's day, we profile 18 inspiring women who lead the field in AI, Analytics, Big Data , Data science, and Machine Learning areas.
Source: KdnuggetIf we look back, there is a huge progress in the field of technology and innovations. Many technologies emerge as the future starts and today, some of them are on their way up in the industry. Technologies like Machine Learning, artificial Intelligence, Big Data Analytics, Cloud Computing, ChatBots, Wearable Devices, Drone, etc. The aim of discovering all these modern technologies is to improve the quality of life of the common people and make their daily job much easier than ever before. Many business and industrialist have heavily invested in this technologies and they are reaping rich rewards in the recent times. Out of all these technologies, Artificial Intelligence (AI) has raised its standard tremendously in the last 4-5 years.
Source: HOBThese are the most popular data mining books on Amazon. As you look to increase your knowledge, is there something listed here that is missing from your collection?
Source: KdnuggetVery interesting compilation published here, with a strong machine learning flavor (maybe machine learning book authors - usually academics - are more prone to making their books available for free). Many are O'Reilly books freely available. Here we display those most relevant to data science.
Source: DSCThe best jobs right now in the planet include titles like data scientist, data engineer, and business analyst. Yet too often, employers find it hard to acquire the right person for a job. There is a persisting gap between the skills possessed by the current or the emerging workers and the abilities required by the business.
Source: HOBWhether you are learning data science for the first time or refreshing your memory or catching up on latest trends, these free books will help you excel through self-study.
Source: KdnuggetWe are now at 91 questions. We've also added 50 new ones here, and started to provide answers to these questions here. These are mostly open-ended questions, to assess the technical horizontal knowledge of a senior candidate for a rather high level position, e.g. director.
Source: DSCWhether you are learning data mining for the first time or refreshing your memory or catching up on latest trends, these free books will help you excel through self-study.
Source: DSCLooking to learn Python this year? Come check out a list of the best five courses to help start your journey and get you closer to being a Python pro!
Source: DzoneData has emerged as the new oil. Enterprise success now hinges on the ability to extract insights from the unprecedented flow of data. This is where data science serves its purpose to help enterprises see meaning out of information and make strategic decisions.
Source: MarutitechWe probably all know that obesity is becoming a big problem in the developed world and just becoming bigger. It's a mindset that more is always better like more food, more choice but that's not always the case.
Source: HOBThis post will point out 5 thing to know about machine learning, 5 things which you may not know, may not have been aware of, or may have once known and now forgotten.
Source: KdnuggetThe merging of Big Data and Cloud powered by Artificial Intelligence (AI) and Machine Learning will be the next game changers and we consider that it will be a multi-trillion dollar prospect for the Indian economy. We are in the halfway of the single largest renovation the world has even seen since the industrial revolution.
Source: HOBThe Deep Learning textbook is a resource intended to help students and practitioners enter the field of machine learning in general and deep learning in particular. The online version of the book is now complete and will remain available online for free.
Source: DSCThe cabinet of Israel on Sunday approved a $264.5 mn nationwide program, which will span over five years to make health data about its population accessible to private companies and researchers.
Source: HOBIf you look at it closely, you will see that in some ways Martine Rothblatt, the chairwoman and founder of United Therapeutics and James Park, CEO and co-founder of Fitbit are infact unusual entrepreneurs and healthcare leaders. Both were outsiders to the industry and neither of them were well versed with the regulatory arts of American Healthcare.
Source: HOBWe take a look at five things you need to know about Big Data. There's a lot of social media and general internet buzz regarding Big Data, but what exactly is it?
Source: KdnuggetAn archive of all O'Reilly data ebooks is available below for free download. Dive deep into the latest in data science and big data, compiled by O'Reilly editors, authors, and Strata speakers:
Source: DSCThis was the subject of a popular discussion recently posted on Quora: 20 questions to detect a fake data scientist. We asked our own data scientist, and he came up with a very different set of questions: compare his answer (#1 below - 20 questions) with Quora replies (#2 and #3 below - 30 questions). Note that #2 focuses on statistics, and #3 on architecture. The link to the original Quora discussion is also provided in this article. Which questions would you add or remove?
Source: DSCModi government has actively used big data and analytics in its governance to succeed and reform the country. Here is a look at some of the top use cases.
Source: HOBThere's been a lot of hype about Data Science... and probably just as much confusion about it.
Source: KdnuggetIBM has showcased its new cloud offering called Cloud Private Data that has been designed to assist businesses make use of ML and data science techniques.
Source: HOBWe examined 140 frameworks and distributed programing packages and came up with a list of top 20 distributed computing packages useful for Data Science, based on a combination of Github, Stack Overflow, and Google results.
Source: KdnuggetARE ALGORITHMS taking over our jobs? Yes, yes they are... and that a good thing. With a focus on leveraging algorithms and balancing human and AI capital, here are the top 10 algorithm categories used to implement A.I., Big Data, and Data Science.
Source: Bizcatalyst360Top 10 data mining algorithms, selected by top researchers, are explained here, including what do they do, the intuition behind the algorithm, available implementations of the algorithms, why use them, and interesting applications.
Source: HackerbitsInfosys has made an investment of $1.5 mn in Waterline data science, a provider of data discovery and data governance software.
Source: HOBThe merging of Big Data and Cloud powered by Artificial Intelligence (AI) and Machine Learning will be the next game changers and we consider that it will be a multi-trillion dollar prospect for the Indian economy. We are in the halfway of the single largest renovation the world has even seen since the industrial revolution.
Source: HOBHone yourself to be the ideal candidate at your next data scientist job interview with these frequently asked data science interview questions. Data Scientist interview questions asked at a job interview can fall into one of the following categories -
Source: DezyreMachine learning is an application of artificial intelligence that gives a system an ability to automatically learn and improve from experiences without being explicitly programmed. In this article, we have listed some of the best free machine learning books that you should consider going through (no order in particular).
Source: DSCSummary: Advanced analytic platform developers, cloud providers, and the popular press are promoting the idea that everything we do in data science is AI. That may be good for messaging but it's misleading to the folks who are asking us for AI solutions and makes our life all the more difficult.
Source: DSCData Science has become an integral part of making crucial business decisions in today's competitive market. This is one of the reasons companies are on a rampage to hire Data Scientists and qualified ones at that. The data science job interviews at companies like Facebook, Google, LinkedIn, AirBnB, Insight, Twitter, Mu Sigma have one thing in common - these interviews are tough. But we have a list of helpful data science interview questions from these companies that will help while someone is preparing to apply for the post of a Data Scientist.
Source: HOBThe cabinet of Israel on Sunday approved a $264.5 mn nationwide program, which will span over five years to make health data about its population accessible to private companies and researchers.
Source: HOBPython's growing adoption in data science has pitched it as a competitor to R programming language. With its various libraries maturing over time to suit all data science needs, a lot of people are shifting towards Python from R. This might seem like the logical scenario. But R would still come out as the popular choice for data scientists. People are shifting towards Python but not as many as to disregard R altogether. We have highlighted the pros and cons of both these languages used in Data Science in our Python vs R article. It can be seen that many data scientists learn both languages Python and R to counter the limitations of either language. Being prepared with both languages will help in data science job interviews.
Source: HOBIf you are looking to learn python than what could be a better source than taking help from books written by professionals? In order to help you with your search we have created a list of best book for python data science, so that you don't have to wait and based on your requirements you can start your learning process with best books to learn python:
Source: Digital VidyaThese articles have been divided into 3 parts which focus on each topic wise distribution of interview questions. Below are some of the questions that maybe asked during a data science interview, that is related to R programing specifically.
Source: DezyreWe will see real-time big data come to the forefront in the enterprise world this year. There is a convergence of several factors that will lead to this. Companies have increasingly begun to use cloud solutions and advanced data processing solutions in order to derive business insights for improving customer experience, optimizing operational processes and providing executives with critical data points.
Source: HOBThe value of data-driven Customer Value Management or CVM cannot be underrated. Data and other algorithms/analytics that shape data are an imperative part of customer value management in a telecom company.
Source: DSCHere are the four big data trends that will be driving change in the enterprise landscape in the coming year.
Source: HOBI wrote this quick primer so you don't have to parse all the information out there and instead can learn the things you need to know to quickly get started.
Source: kDnuggetThere are no cover articles praising the fails of the many data scientists that don't live up to the hype. Here we examine 3 typical mistakes and how to avoid them.
Source: CyborgusAs everyone knows Machine learning studies computer algorithms for learning to do stuff. We might, for instance, be interested in learning to complete a task, or to make accurate predictions, or to behave intelligently.
Source: DSCPersonally, I haven't learnt as much from videos & online tutorials as much I've learnt from books. Until this very moment, my tiny wooden shelf has enough books to keep me busy this winter.
Source: AVA comprehensive course on Hadoop for just $39.
Source: HOBIn this blog, we will discuss Data Science vs Artificial Intelligence vs Machine Learning vs Deep Learning. Also, will discuss each of these individually for better understanding.
Source: Data FlairBased on historical data and accurately predicting some patterns out of it then, Data science comes into the picture. Data Science is the data driven decision making and building business strategies based on data analysis by removing any manual or judgemental error.
Source: HOBResearchers are working to convert massive sets of big data into unique sound patterns in order to improve anomaly detection and comprehension.
Source: HOBNatural language processing is a technology that combines big data and artificial intelligence together and brings it to the table.
Source: HOBNewer, advanced strategies for taming unstructured, textual data: In this article, we will be looking at more advanced feature engineering strategies which often leverage deep learning models.
Source: KdnuggetFlipkart the indian online retail giant is on a hiring spree and looking for data scientists actively in order to further their AI in India program.
Source: HOBComing European GDPR directive affects data science practice mainly in 3 areas: limits on data processing and consumer profiling, a "right to an explanation" for automated decision-making, and accountability for bias and discrimination in automated decisions.
Source: KdnuggetHere are our 6 predictions for data science, machine learning, and AI for 2018. Some are fast track and potentially disruptive, some take the hype off over blown claims and set realistic expectations for the coming year.
Source: DSCThe firm's top 10 prognostications on where technology will take us include shopping in AR, corporate fitness programs, and much more.
Source: PC MagFrustrations of the data scientist! Yes, I am a data scientist and yes, you did read the title correctly, but someone had to say it. We read so many stories about data science being the sexiest job of the 21st century and the attractive sums of money that you can make as a data scientist that it can seem like the absolute dream job.
Source: TDSWhat I Would Have Told Myself a Few Years ago Two years ago, I shared my experience on doing data science in the industry. The writing was originally meant to be a private reflection for myself to celebrate my two year twitterversary at Twitter, but I instead published it on Medium because I believe it could be very useful for many aspiring data scientists.
Source: MediumBefore I get to the meat of this post, I want to make one thing super clear: you do not need a graduate degree to be a data scientist. Unless you're doing cutting-edge machine learning research (which, let's be honest, doesn't describe 99.9% of data scientists including me!), a degree in how to do research just isn't necessary. Anyone who tells you differently is trying to sell you something probably a data science graduate degree.
Source: FreecodecampI recently came across Rachel Tomas's article on the importance and value of writing about what you learn, and Julia Evans's advice on why and how to write, and thus I have decided to follow their advice and write an article (for the first time ever!).
Source: TDSWhat Skills Do You Need To Go From Jr. To Sr. Developer. The role of a data scientist still varies from company to company and even team to team. This makes it much harder for companies to create a standardized growth plan for their data scientists.
Source: HackernoonThis is a hard question to answer. Hang with me in this one (and this is not the final answer about the universe, existence and everything.
Source: TDSI recently joined the Enterprise Insight Studio team at Accenture's global centre for innovation in Dublin as an Artificial Intelligence (AI) Software Engineering.
Source: TDSAre Coursera courses still free? At Class Central, I get that question so often that I wrote a guide to answer it.
Source: FreecodemapA great CV might get you an interview. A bad CV will be thrown away!
Source: TDSDeep changes are underway in how data science is practiced and successfully deployed to solve business problems and create strategic advantage. These same changes point to major changes in how data scientists will do their work. Here's why and how.
Source: DSI've had several conversations recently with people I know in the data science space that always start out about business and then drift to the state of data science as a whole.
Source: DataScienceAbility to write a production-level code is one of the sought-after skills for a data scientist role- either posted explicitly or not. For a software engineer turned data scientist this may not sound like a challenging task as they might have already perfected their skill at developing production level codes and deployed into production several times.
Source: TDSThe most important lessons I've learned so far... Ok, so it's actually 14 months but it didn't have the same ring to it as "1 year". I've spent that 14 months at one company, News UK. I'm now about to embark on a new journey at Deliveroo as a consumer and growth algorithms data scientist, so I thought now would be a good time to reflect on the things that I've learned during my time at News UK.
Source: TDSGartner predicts that the number of IoT devices will surpass 11.2 billion this year, the majority of which are in the consumer sector. The same report forecasts that the endpoint spending will exceed $2 trillion, in hardware and software combined.
Source: iotevolutionworldA new report aims to help universities shape data analytics education. Technologies that collect data for analysis exist in pretty much every aspect of life - from smart thermometers in homes to wireless sensor networks.
Source: EdTechThere is a lot of buzz around deep learning technology. First developed in the 1940s, deep learning was meant to simulate neural networks found in brains, but in the last decade 3 key developments have unleashed its potential.
Source: KdnuggetWe discuss 8 ways to perform simple linear regression in Python ecosystem. We gloss over their pros and cons, and show their relative computational complexity measure.
Source: FreecodemapWith data now easier to collect and analyze than ever before, companies are recognizing the business value of such information - and the need to tap into it quickly. Enter the chief data officer (CDO), the newest role in the C-suite that is responsible for defining and putting into place a data management strategy.
Source: DataScienceI've read a number of articles stating how hard it was to get into Analytics and Data Science. This hasn't been my experience, so I wanted to share. We'll look at interviewing, the tools I currently use, what parts of industry I wasn't prepared for in school, and what my career trajectory has looked like. But not in that particular order.
Source: TDSGoing somewhere nice for your summer holidays? Somewhere with a nice beach perhaps - Goa, Grand Cayman or Grimsby? Or a bustling city break? Wherever you're going there's sure to be long periods where you'll sit for hours on end with little to do but read, so I thought I'd throw together a few free eBooks for your Kindle to while away the long hours in the airport, in a traffic jam or on the beach.
Source: DSCTech improvement all across the industries have helped to develop Artificial Intelligence for advancement of businesses today. And, Machine Learning(ML) is a branch of AI. So, if we basically talk about Machine Learning (ML),it actually provides computers with the ability to do certain tasks, such as recognition, diagnosis, planning, robot control, prediction, etc., without being explicitly programmed. It focuses on the development of algorithms that can teach themselves to grow and change when exposed to new data. The process of ML is somehow similar to that of Data Mining. Both search through data to look for patterns. But, ML uses the data to improve the program's own understanding. ML programs are used to detect patterns in data and adjust program actions accordingly.
Source: HOBBased on historical data and accurately predicting some patterns out of it then, Data science comes into the picture. Data Science is the data driven decision making and building business strategies based on data analysis by removing any manual or judgemental error. Data Science is everywhere and here is the rescue for how to be a data scientist.
Source: HOBData analytics is the key to drive optimal strategy for every business. It helps a business to effectively target consumers with marketing efforts while also creating products that facilitates in solving current problems.
Source: HOBData is hailed as the marketer's Holy Grail for a good reason providing marketers with the insight needed to tailor advertising campaigns helps them maximize engagement among target audiences and return on investment (ROI).
Source: ForbesNatural language processing is a technology that combines big data and artificial intelligence together and brings it to the table. Today guests have choices like ordering delivery and meal kit services that threaten to disrupt margin-accretive dine in business. Because of this, a deep understanding of guest expectations is more important than ever before. Natural language processing helps you automate key guest insights to give you the upper hand.
Source: HOBBusinesses across the globe are facing the brunt, one of huge data influx and second of increasing data complexity and of course the market volatility.
Source: DSCData Science is quite a large and diverse field. As a result, it is really difficult to be a jack of all trades. Traditionally, Data Science would focus on mathematics, computer science and domain expertise.
Source: TDSPublished in 2013, but still very interesting, and different from most data science books. Authors: Ian Langmore and Daniel Krasner.. This book focuses more on the statistics end of things, while also getting readers going on (basic) programming & command line skills. It doesn't, however, really go into much of the stuff you would expect to see from the machine learning end of things.
Source: HOBIt's all well and good to ask if androids dream of electric sheep, but science fact has evolved to a point where it's beginning to coincide with science fiction. No, we don't have autonomous androids struggling with existential crises - yet - but we are getting ever closer to what people tend to call "artificial intelligence."
Source: DSCAre you currently pursuing your masters in Data Science? Overwhelmed with Buzzwords and Information? Don't know where and how to start your study? Then start with this article and a starter kit provided, but learn it for excellence and not just for the exams.
Source: KdnuggetTop viewed videos on Big Data since 2015 include Big Data use cases in psychographics, sports, politics and data monetisation.
Source: KDnuggetTechnology is making financial services, particularly lending, one of the most enthralling segments to keep an eye on. While several technological transformations going on, here below are two which are already in flourishing mode and ready to completely change the way financial sector services are offered online.
Source: HOBIn the world of postmodernism, Relativism has been, in its various guises, both one of the most popular and most reviled philosophical doctrines. According to Relativism, there is no universal and objective truth; rather each point of view has its own truth. You must be wondering why I am discussing it and how it is even related to Data Science.
Source: TDSData analytics is the key to driving optimal strategy for every business. It helps a business to effectively target consumers with marketing efforts while also creating products that facilitates in solving current problems. Businesses are using data analytics in various aspects within technological tools across departments, from IT management to customer support administration. By storing data safely and securely in a cloud-based backup system that uses file encryption, enterprises can protect private consumer information and business insights that provides them with a competitive edge.
Source: HOBThe merging of Big Data and Cloud powered by Artificial Intelligence (AI) and Machine Learning will be the next game changers and we consider that it will be a multi-trillion dollar prospect for the Indian economy. We are in the halfway of the single largest renovation the world has even seen since the industrial revolution. India, though persisted undiscovered in the early 90s, holds the potential to be revealed as creators of asset class because of their ability to create unstructured data sets. India is poised to leapfrog the world in Artificial Intelligence, as the demography is not controlled by the legacy usage of computers or tablets so they can transfer directly to the phone. Also, India is creating amorphous data at a very speedy pace and has data sets in bulk that very few countries possess.
Source: HOBHere is a tutorial I have created (foundations of machine learning and data science for developers) It is based on my insights from the Enterprise AI course and also the Data Science for IoT course which I teach at Oxford University
Source: DSCWe probably all know that obesity is becoming a big problem in the developed world and just becoming bigger. It's a mindset that more is always better like more food, more choice but that's not always the case. This is a just similar phenomenon that we must choose the right food in the right amount to keep us healthy, same businesses must be judicious about what data they collect and what variety they have.
Source: HOBData science has made its way into practically all facets of society - from retail and marketing, to travel and hospitality, to finance and insurance, to sports and entertainment, to defense, homeland security, cyber, and beyond.
Source: DSCBig data analytics is the process of examining large and varied data sets -- i.e., big data -- to uncover hidden patterns, unknown correlations, market trends, customer preferences and other useful information that can help organizations make more-informed business decisions. Their effectiveness depends on the collective use by enterprises to obtain relevant results for strategic management and implementation.
Source: Maruti Tech LabsFor a myriad of data scientists, linear regression is the starting point of many statistical modeling and predictive analysis projects. The importance of fitting, both accurately and quickly, a linear model to a large data set cannot be overstated.
Source: TDSArtificial Intelligence and Machine Learning technologies have made impressive strides in recent years, and thanks to platforms such as cloud, AI and machine learning capabilities are now widely available to organizations of all types and sizes. But as any seasoned technology leader knows, having technology on the shelf doesn't mean it will get accepted or used. It could simply just end up staying on the shelf.
Source: ForbesBig data and data science are terms no longer restricted to just the techies' vocabularies. In this ever-increasing digital world, these technological advances are critical for businesses to succeed and grow. Big data is estimated to generate a 60% increase in retailers' operating margins on a global scale. European government administrators could save over $149 billion in operational efficiency improvements by leveraging big data.
Source: HOBIs data analytics fuelling the IoT revolution or is IoT fuelling data analytics revolution is a key question that businesses must look for. These two areas Data Analytics and IoT have a symbiotic relationship. One feeds on the other for growth and adoption. IoT connects all manner of endpoints, unraveling a treasure trove of data. The availability of this data is driving opportunity for data analytics by extracting and presenting useful information for decision makers to make informed decisions, which are more predictive in nature rather than reactive.
Source: HOBI followed the latest trend also downloaded the zip archive of my Facebook data, but what I found after analyzing the data is not the thing I was expecting.
Source: HOBMachine Learning Engineer, with avg. salary of $136K and Data Scientist, with avg. salary $133K are among the top US jobs in 2018, according to job site Indeed.
Source: HOBFor data science beginners, 3 elementary issues are given overview treatment: supervised vs. unsupervised learning, decision tree pruning, and training vs. testing datasets.
Source: HOBDon't "do something interesting" with data, AI, and ML-do something human-centered
Source: HOBToday, each of the many things we do everyday can literally be recorded. Every credit card transaction is digitalized and traceable; Our public presence is consistently being monitored by the many CCTV's hanging around every corner of the city
Source: HOBArtificial intelligence (AI) is growing every day at a furious rate, and with it, the statistics surrounding the industry and the various industries it's revolutionizing are changing.
Source: HOBAs an organizer for a data science meetup group, I am often asked this question.
Source: HOBOver the past year, I have had the opportunity to speak with a lot of prospective Data Science bootcamp students sharing my pre and post bootcamp experiences and helping them put in context some of the major factors they need to consider before deciding to attend a Data Science bootcamp.
Source: HOBA person new to the Data Science field details their salary and the negotiation process.
Source: HOBTaken from the answers experts gave, here is a compiled list of 5 essential actions and attitudes that keep data scientists learning after their degrees.
Source: HOBA basic grounding in the principles and practices around artificial intelligence (AI), automation and cognitive systems is something which is likely to become increasingly valuable, regardless of your field of business, expertise or profession.
Source: HOBArtificial Intelligence, Blockchain and Machine Learning globally are considered to be the holy trinity of technologies. Startups, SMEs and large corporations all together are looking at the various use case of these technologies. In a recent report, TMT predictions for 2018, Deloitte identified five key developments that will lead the popularity of machine learning in the future.
Source: HOBIf you are learning a new skill, think about HOW you are learning. My plan was to never be a student again. I like learning. I enjoy the process of learning and as a teacher and scientist, I am continuously engaged in this process.
Source: HOBHow do Machine Learning algorithms handle such large amount of data in companies (or real-life cases)? originally appeared on Quora: the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HOBI started working at www.comet.ml a few months ago, where we are building a really amazing tool for machine learning engineers. The short of it is that we help track experiments using a single line of code that automagically saves everything to make your model reproducible. You can get great experiment logging and history without being tied to a single platform.
Source: HOBNo matter what company does, in order to succeed in today's competitive environment, you need a robust infrastructure to both store and access the company's data. And, it needs to be done from the very beginning. And, thus the demand for skilled data engineers is rapidly growing and is projected to grow at a faster rate.
Source: HOBBig data isn't just a buzz word anymore. It is extremely important for organizations to pay attention to it. Data is now driving more organizational decisions than ever before. With vast amounts of data being produced in real-time, there is a huge demand for people with skills to manage, analyze and help organizations use this data effectively. Technology changes frequently, and so do buzzwords. Big data, which was one of the most used terms until recently, has been replaced with 'real-time'. This doesn't mean that the demand for big data skills is now low. Rather, it simply means that the keyword has been replaced.
Source: HOBI'm sure everyone who has been following tech industry news knows about "big data" and "AI." Although there is no industry-consistent definition for either term, most people tend to agree that both have been playing more and more important roles lately
Source: HOBnyone with a background in Physics or Engineering knows to some degree about signal analysis techniques, what these technique are and how they can be used to analyze, model and classify signals.
Source: HOBAnnual salaries for data scientists and machine learning engineers vary significantly across the world. Based on a 2017 Kaggle survey of data professionals, countries with the highest paid data scientists and machine learning engineers (in USD) were: US ($120K), Australia ($111K), Israel ($88K), Canada ($81K) and Germany ($80K). Countries with the lowest annual salaries were: Brazil ($35K), Poland ($29K), Ukraine ($25K), India ($14K) and Russia ($13K).
Source: HOBI attended IBM's inaugural Think event in Las Vegas last week. This event, IBM's largest (estimated 30,000+ attendees!), focused on making your business smarter and included keynotes and sessions on such topics as artificial intelligence, data science, blockchain, quantum computing and cryptography.
Source: HOBA recent survey of over 16,000 data professionals showed that the most common challenges to data science included dirty data (36%), lack of data science talent (30%) and lack of management support (27%). Also, data professionals reported experiencing around three challenges in the previous year. A principal component analysis of the 20 challenges studied showed that challenges can be grouped into five categories.
Source: HOBThe practice of data science requires the use of analytics tools, technologies and languages to help data professionals extract insights and value from data. A recent survey by Kaggle revealed that data professionals relied on Python, R and SQL more than other tools in 2017.
Source: HOBAccording to Forbes, 53 % of organizations are embracing Big Data Analytics, which means the need to gather and secure data has never been this critical before.
Source: HOBMarketing is in a transitional era and new technologies have changed so much about how marketers work from the responsibilities of the chief marketing officer, to what content is created, and why. Marketing teams have to improve their marketing strategies and customer outreach by tapping into data analytics and marketing automation. This includes the use of analytics to understand how current and potential customers behave and make decisions in different contexts and to analyze the design of demand generation programs to increase marketing performance and return on investment.
Source: HOBLeveraging the application of big data, whether it is to improve the process of product development, improve customer retention or work through the data to find new business possibilities organizations are more relying on the expertise of data scientists to sustain, grow and beat their competition. Consequently, as the market for data scientists increases, the system presents an exciting career path for students and existing professional.
Source: HOBData scientists work at all levels of the organization. Our survey of data professionals revealed that Director-level data scientists have the highest level of proficiency across many data science skills and work with more of their peers compared to data scientists who are Individual Contributors, Managers or even Executives. Satisfaction with outcome of analytics projects did not differ across job levels.
Source: HOBBig data is the major field in IT that is going to change many trends in the industry. Their individual applications are ginormous and will start a new era in the technological world. Most companies already understand the importance of using big data to drive insights and decisions and this is already on hype.
Source: HOBThe Deep Learning textbook is a resource intended to help students and practitioners enter the field of machine learning in general and deep learning in particular. The online version of the book is now complete and will remain available online for free. For more information about this 700+ pages free book and its authors, click here.
Source: HOBAs digital marketing strategies grow more sophisticated and complex, businesses find themselves wrestling with more data than ever.
Source: HOBToday, big data has made it possible to reap immense benefits for businesses, right from sales, to marketing and accounting, and almost everything. Human Resources (HR) is not a business function that comes to our mind when we think about big data, but it is a business function that can acquire huge benefits.
Source: HOBTeradata Corporation is a provider of database-related products and services. Putting all the infrastructure in place needed to drive real-time insight is a complex endeavor. The number of individual platforms that need to be stitched together is often daunting to even the most experienced IT organizations. Looking to make it simpler to achieve that goal, Teradata announced it has combined support for geospatial, temporal and time-series data into a Teradata Analytics Platform that can be queried using Python, R, SAS, or SQL-based tools.
Source: HOBA recent survey of over 16,000 data professionals showed that the most used platforms/resources included Kaggle, Online courses and Stack Overflow Q&A. Additionally, the most useful platforms/resources included Personal Projects, Online courses and Stack Overflow Q&A.
Source: HOBData science requires the effective application of skills in a variety of machine learning areas and techniques. A recent survey by Kaggle, however, revealed that a limited number of data professionals possess competency in advanced machine learning skills. About half of data professionals said they were competent in supervised machine learning (49%) and logistic regression (53%).
Source: HOBI still learn new knowledge everyday with my growing passion in Data Science field. To pursue different career track as a graduating physics student there must be 'Why' and 'How' questions to be answered.
Source: HOBStudent demand for degrees in the subject soars as employers seek skilled analysts
Source: HOBResults from the Kaggle State of Data Science and Machine Learning survey of data professionals revealed that job satisfaction varies widely across job titles. Data professionals who reported the highest level of job satisfaction were: 1) Machine Learning Engineers, 2) Data Scientists and 3) Predictive Modeler. Data professionals who reported the lowest level of job satisfaction were: 1) Engineers, 2) DBA/Database Engineers and 3) Programmers.
Source: HOBThis article covers why it's important to consider all the factors when being hired as a data scientist.
Source: HOBIt is vital to have a good understanding of the mathematical foundations to be proficient with data science. With that in mind, here are seven books that can help.
Source: HOBArtificial intelligence is one of the highest demanding fields. It includes general AI, expert systems also known as data mining, machine learning, Neural Network and lastly, fuzzy systems. These have been essential and interesting topics among the students, scholars, faculties as well as professionals.
Source: HOBSimulating human reasoning was the main reason but now it has been broadened to include all other forms of Artificial Intelligence. Much of the recent hype has been learn about Machine Learning that leads to predictive behavior and analysis for enterprises. Slowly, one of the most complex forms of AI, deep learning is also gaining momentum. The neurons in the human brains can connect to other neurons anyhow without any specific pattern. But neural networks using machine learning are a replication of the brain network and consist of more defined connections. Deep learning is a far more complex technology and addresses only elementary problems like text mining, language translation or image recognition.
Source: HOBBig Data have been heard for some time now. The concept of Big data is continually evolving and being reconsidered, as it remains the driving force behind many ongoing waves of digital transformation, including artificial intelligence (AI), data science and the Internet of Things (IoT). The data which is unstructured, time-sensitive or immense cannot be processed by relational database engines. So, this type of data requires a different processing approach called big data, which uses massive parallelism on readily-available hardware.
Source: HOBI recently made a Batman analogy when discussing the topic of data science with some colleagues. In this post, I will explore this analogy further.
Source: HOBIn the past few years, I have met up with a lot of employers and conducted interviews for training program. Through the conversations and interviews and seeing the end results, I thought I will share more on how to prepare for your resume and even the interviews for a data science role.
Source: HOBConsumers choose brands that demonstrate their personal ethos. Customers get attracted to companies which are focused on real-time communication and which creates interesting content. To save your real customers, you must invest in digital marketing. Digital Marketing has played a vital role to portray the success of an organization.
Source: HOBHow do you combine historical Big Data with machine learning for real-time analytics? An approach is outlined with different software vendors, business use cases, and best practices. Big Data has gained a lot of momentum recently. Vast amounts of operational data are collected and stored in Handoop and other platforms on which historical analysis is conducted. Business intelligence tools and distributed statistical computing are used to find new patterns in this data and gain new insights and knowledge for a variety of use cases: promotions, up- and cross-sell campaigns, improved customer experience, or fraud detection.
Source: HOBUsing Reinforcement Learning to Tackle CitiBike Rebalancing Problems and Beyond
Source: HOBAccording to an IDC Digital Universe Study, by the year 2020, about 1.7 megabytes of new information will be created every second for every human being on the planet. Uncovering insights from this homogenous amount of information will require the seamless adoption of big data technologies, stronger data security, and integration of AI, machine learning and cognitive technologies applications with business operations
Source: HOBNo matter how large or small a company is, organizations across the globe generate a massive amount of data. While businesses have quickly come to realize that there is tremendous value to be extracted from the large volume of data that is collected, they are still not harnessing the opportunities that can be derived from analyzing data properly.
Source: HOBToday, we live in a world which is highly driving towards digital transformation. Digital Transformation is more than just a buzzword - it's a process of using technology to radically change your business.
Source: HOBSince long, there has been a lot of buzzing in the media about Data Science, Big Data, Machine Learning, Deep Learning etc. captivating decision based on Data is not only an intrinsic intelligence but a well-built profitable sense too. While every corporation is trying to change itself into a data-driven corporation, many are stressed to apply it due to lack of considerate and lack of skilled professional.
Source: HOBBig data goes beyond volume, variety, and velocity alone. One should need to know these 10 characteristics and properties of big data to prepare for both the challenges and advantages of big data initiatives.
Source: HOBTaking decisions based on Data is not only an inherent sense but a strong commercial sense too.
Source: HOBData science is playing a significant role in managing customer experience. It has contributed to nearly all areas of the CRM. There are still a number of companies, yet to embrace this technology for enhancing their marketing methodologies. One of the main reasons is the lack of awareness of how data science can help engage customers more effectively, and, moreover, an inability to quantify the potential improvements.
Source: HOBA Machine Learning Framework is an interface, library or tool which allows developers to more easily and quickly build machine learning models, without getting into the nitty-gritty of the underlying algorithms. It provides a clear, concise way for defining machine learning models using a collection of pre-built, optimized components.
Source: HOBThe amount of data that companies collect and store today is staggering. However, it's not the volume of data being gathered that's most important it's what companies are doing with that data that matters most. With both unstructured and structured data streaming in from everywhere at an unprecedented rate, making connections and extracting insight is complicated work that can quickly spiral out of control.
Source: HOBNEC Corporation (TSE: 6701) today announced the establishment of dotData, Inc., a new startup company based in Cupertino, California, in the heart of Silicon Valley, that develops and globally provides software that automates data science processes using artificial intelligence (AI).
Source: HOBThe amount of digital data in the universe is growing at an exponential rate, doubling every two years, and changing how we live in the world. Big Data is surely a big deal. We definitely are seeing an increase in activity with companies responding to the impact big data has made on their business.
Source: HOBIt seems like data/analytics has much less clarity around roles than most other common functions at tech companies. Do you think this will ever change? originally appeared on Quora: the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HOBAs more and more Indian firms look to leverage big data for various aspects of their businesses, data science and analytics professionals are having their day in the sun.
Source: HOBArtificial Intelligence is everywhere. The application of Artificial Intelligence is to improve the customer experience is on the rise. In fact, this year the Consumer Electronic Show featured its first ever Artificial Intelligence Marketplace to showcase the latest innovations designed to perform human tasks. Products ranged from big data analytics to speech recognition to advanced decision-making to predictive technology. Many of these solutions are already being leveraged by great companies to add a magic touch to their services.
Source: HOBEvery airline company wants the passengers to experience the flight like once in a lifetime experience. By always putting their passenger likes at the top and then as a result plans the whole thing. Also to bring a circumference over all of this, information is the key. They analyze the traveler s data, his preference and his fondness.
Source: HOBBig Data can deliver remarkable marketing campaigns however, the success of the campaign will depend upon the enterprise's willingness to invest in technologies, processes, and its engagement with customers. Many consider marketing as an art nowadays, and it is, beyond doubt, a complicated piece of work, which requires craft as well as graft. Going back to the website's blunder, it is evident that there was a terrible misinterpretation in the analytical data they received. Today, direct marketing heavily relies upon Big Data analytics to pin down individuals based on their Google queries, browsing history, credit card swipes and so on.
Source: HOBAh the dreaded machine learning interview. You feel like you know everything... until you're tested on it! But it doesn't have to be this way.
Source: HOBData Science is getting very popular and many people are trying to jump into the bandwagon, and this is GREAT. But many assume that data science, machine learning, plug any other buzzword here, is to plug data to some Sckit-Learn libraries. Here is what the actual job is.
Source: HOBI participated in Santander Customer Satisfaction challenge, ran on Kaggle for 2 months and got into top 1%. Here, I would be discussing my approach to this problem.
Source: HOBI started my way in the Data Science world a few years back. I was a Software Engineer back then and I started to learn online first (before starting my Master's degree).
Source: HOBThis is a story about the danger of interpreting your machine learning model incorrectly, and the value of interpreting it correctly. If you have found the robust accuracy of ensemble tree models such as gradient boosting machines or random forests attractive, but also need to interpret them, then I hope you find this informative and helpful.
Source: HOBArtificial intelligence is the future. Google, Microsoft, Amazon and Apple are all making big bets on AI. (Amazon owner Jeff Bezos also owns The Washington Post.) Congress has held hearings and even formed a bipartisan Artificial Intelligence Caucus. From health care to transportation to national security, AI has the potential to improve lives. But it comes with fears about economic disruption and a brewing "AI arms race ." Like any transformational change, it's complicated. Perhaps the biggest AI myth is that we can be confident about its future effects. Here are five others.
Source: HOBMost people don't realize, but the actual "fancy" machine learning algorithm is like the last mile of the marathon. There is so much that must be done before you get there!
Source: HOBKDnuggets poll finds that Machine Learning Engineer, Researcher, and Data Scientist have the highest job satisfaction. Job satisfaction usually starts high, but drops significantly after 4 years on the job. Data professionals in Asia and Latin America are most unsatisfied.
Source: HOBThere are so many amazing ways artificial intelligence and machine learning are used behind the scenes to impact our everyday lives and inform business decisions and optimize operations for some of the world's leading companies. Here are 27 amazing practical examples of AI and machine learning.
Source: HOBThere are so many amazing ways artificial intelligence and machine learning are used behind the scenes to impact our everyday lives and inform business decisions and optimize operations for some of the world's leading companies. Here are few amazing practical examples of AI and machine learning
Source: HOBBig data is growing everyday and becoming a very popular word in the tech world. Many people around us keep talking about it, but do they know what it actually means? Big data is nothing but the collection of unstructured data. This data is not in a particular format and because of this its datasets sizes are generally huge measuring tens of terabytes and sometimes crossing the threshold of petabytes. The term big data was preceded by very large databases (VLDBs) which were managed using database management systems (DBMS). Having so much of data pertaining to the business provides a very niche way of increasing the sales or profits of any company. But in order to do so we need to make use of Big data analytics.
Source: HOBMachine learning has been instrumental in solving some of the important business problems such as detecting email spam, focused product recommendation, accurate medical diagnosis etc. The adoption of machine learning (ML) has been accelerated with increasing processing power, availability of big data and advancements in statistical modeling.
Source: HOBData has always been important for businesses, but the importance of information analytics have been discovered only recently. However, generally some people confuse information analytics with big data or other data tools, and think that accomplishment required for data assemblage are same as the skills required for data analytics
Source: HOBThe exploding demand for data scientists is representative of a need that will not slow down anytime soon. The monetary value of storing, workings with and drawing penetration from data keeps falling the demand for professionals that can work with this data and deliver on the insight will continue to grow.
Source: HOBBig data is now playing a large role in most industries, with the number of uses for information rising regularly as new algorithms and methods to analyze data are developed. The application of big data in taxation has eased the effort required for high levels of accuracy, and has increased the uses for tax information around the world. Big data in public administration has yet to play a significant role across the industry, however, its potential awaits untapped.
Source: HOBIn an organizational or business data analysis, you must Begin with the right question . Questions should be measurable, clear and concise. Design your questions to either qualify or disqualify potential resolution to your specific job or opportunity.
Source: HOBData is everywhere. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. Data has been a crucial part of our lives.
Source: HOBData science is ubiquitous and is broadening its branches all over the world. The invisible hand of data science in the form of ranking algorithm governs the news streams and feed, recommendation engines that guide the content we see on Netflix and YouTube. Similarly, survival analyses for the estimation of time queues and neural networks for self-driving cars. But there includes a lot of challenges which hinders a data scientist while dealing with data.
Source: HOBBecoming data scientist is really hard. Each & every project requires a different kind of programming language or software to focus on. There is an immense list of tools for data science. Here are top 8 data science tools in 2018:
Source: HOBData Science is a central part of virtually everything from business administration to running local and national governments. At its core, the subject aims at harvesting and managing data so organizations can run smoothly
Source: HOBThe use of data analytics is becoming more prevalent in the current business landscape. Legal department business models are changing. They're operating more like business units within the corporation and are expected to be high performing and successful.
Source: HOBIn recent years, Data Analytics have become a buzzword for every business organization as information is the crucial resource for any organization which can provide a competitive edge to the company.
Source: HOBAnalytics has become almost an integral part of any organisation process. It has wide scope in improving decision-making ability, efficiency and growth of the org. In marketing and sales, Some company use data analytics as a tool to enhance efficiency of sales team, increase customer base, generate more revenue and ensure Customer loyalty. However most of the company are still not actively involved with it.
Source: HOBBig data can transform how decision-makers view business problems and inform strategic decisions, allowing them to rely upon objective data. Good data, sound analysis and valuable insights are critical for mitigating risks, making balanced strategic decisions and competing against others.
Source: HOBIn 2018, data and data analytics can't be ignored. Data Analytics is quite big buzz these days. Analytics is the combination of analysis and logics and it is the collection, measurement, analysis, visualization and interpretation of digital data illuminating user behaviour on websites, mobile sites and mobile applications. Following are the six ingredients of a successful digital analytics transformation.
Source: HOBToday, organizations acroos the world are leveraging the power of big data in everything, right from designing workplace policies to social media recruitment. Big data has become a buzzword in business circles today. Big data can help a lot when it comes to talent acquisition.
Source: HOBArtificial intelligence is the future. Google, Microsoft, Amazon and Apple are all making big bets on AI. Artificial Intelligence (AI) is all the rage from self-driving cars and Siri personal assistants, to chatbots and email scheduling agents that will take routine tasks out of human hands.
Source: HOBMore businesses and organizations are using data analysis tools, thanks to the explosive growth in the ground of data analytics has seen in recent years. With data analytics, and the kind of outputs expected from it, there are questions growing about the trust that is placed in it, and the fresh ways of decision making.
Source: HOBWith the increase in generation of data, companies are bombarded with large amount of data. This forces company to move towards data-driven approach to business.
Source: HOBWith the growing amount of data available with the organization, Data analytics becomes an integral part of almost every business management. Analytics in itself has wide applicability to add more value to the business
Source: HOBIn the Big Data world, Web Scraping or Data Extraction services are the main and very first requisites for Big Data Analytics. Extracting data from the web has become very necessary for companies to survive in business.
Source: HOBData is everywhere. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. Data has been a crucial part of our lives.
Source: HOBTechnology has been revolutionizing the way we perform tasks. It has made our tasks easier, simpler & faster. All thanks to tech revolution!! The technological innovations are the new big thing in 2018. Heard about AI, Machine Learning? Artificial Intelligence has always been in the favorites' section of tech experts and companies. Now, have a look on top 7 trending technologies in 2018:
Source: HOBIn 2018, data and data analytics can't be ignored. Data Analytics is quite big buzz these days. Analytics is the combination of analysis and logics. Analytics can't be performed without software's. By applying data analytics we can draw conclusion about the any given set of information.
Source: HOBFrom Business to Government to Medicine big data is a technological buzz word now a day. Big Data is essentially the collection and analysis of large amount of data. In very broad terms it centers on the collection and analysis of large volumes of data.
Source: HOBAnalyzing the great potential of Big Data in health care industry, Doctors, Researchers, Scientist and other stakeholders are trying to real world evidence to influence their decision making. Healthcare industry is experiencing a rapid movement towards a new world where focus will be on value and outcomes.
Source: HOBAnalyzing the great potential of Big Data in health care industry, Doctors, Researchers, Scientist and other stakeholders are trying to real world evidence to influence their decision making. Healthcare industry is experiencing a rapid movement towards a new world where focus will be on value and outcomes.
Source: HOBCollecting and analyzing data can offer many benefits to online businesses. To take advantage of these benefits, it s important to first understand the types of data available to you as well as the best way to gather it.
Source: HOBManufacturing is important part of the world's economic development, but the roles it plays in advanced and developing economies has shaped dramatically. In developing countries, manufacturing operations bring new employment opportunities that are changing the societies. Manufacturing always remains important as a job initiator in the whole world.
Source: HOBPredictive Analytics is a buzzword today. Wondering what is it? It's Applications? So, first of all, let's get started on the meaning of Predictive Analytics.
Source: HOBTelecom sector is one of those industry which always looks for new trends and innovative technology to provide better services to its customer. Telecom Industry has already using the trending technologies such as AI, Chatbots, Machine Learning but the development in AI will be a turning point in terms of connectivity, communication, efficiency and delivering customer services.
Source: HOBRecent advances in processing large amounts of data have generated a plethora of new opportunities to improve individual lives and the welfare of our societies. For example, smart meters monitoring domestic electricity consumption can help save electricity when not at home or suggest the cheapest electricity supplier depending on the consumption pattern.
Source: HOBGrowing amount of data available to the organization has led to the development of many analytical tools. As the big data has no significance to the company until and unless it can be converted into valuable insights.
Source: HOBBig Data is the trendy term people use in describing the technology to solve the complex problems. The problems that seemed impossible to solve, now all can be easily solved thanks to the collection and analysis of a huge amount of data. It is clear that Big Data is here to stay in modern era and is also changing the world.
Source: HOBWe are in the midst of a gold rush in AI. But who will reap the economic benefits? The mass of startups who are all gold panning? The corporates who have massive gold mining operations? The technology giants who are supplying the picks and shovels? And which nations have the richest seams of gold?
Source: HOBBanking Institutions and Financial Sector are on the urge of digital transformation. The increasing use of technologies lead to increased risk. With the digitization, the various sources of risks are bank's website, mobile trading applications, corporate banking platform and so on.
Source: HOBNumbers don't lie, data analytics is on rise soon it will be integrate part of all the organizations. Data science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. Data science helps an employee to understand data and then synthesize it in a proper way so that they can communicate in a better way which is beneficial for the companies
Source: HOBClear up the confusion of how all-encompassing terms like artificial intelligence, machine learning, and deep learning differ.
Source: HOBData is gold, The amount of digital data in the universe is growing at an exponential rate, doubling every two years, and changing how we live in the world. Big Data is surely a big deal. Data has replaced oil as the world's most valuable resource. Data can help us achieve tremendous things on both the levels ie individual and businesses, and as a society. But to extract the best value from data, you need to be using the best techniques and the best technology
Source: HOBFor beginners and students to have better understanding about the emerging technologies and charity about the artificial intelligence, one need to understand the basic terms, concepts related to it.
Source: HOBWhen machines are connected to internet, we start getting real-time data in large amount. That real-time data is not only helpful in the Descriptive analysis but also helpful in understanding the behavioral patterns to get predictive and prescriptive analysis which means what will happen and actions we have to take. In short, with the emergence of IoT, the whole equation has transformed. Now we can leverage this data in our daily job to get best possible outcomes and also understand where their time and money are spent. So that we can use the resources in an effective manner hence wastage can be minimized.
Source: HOBWith the growing awareness about big data and data analytics, it has revolutionized many industries. Logistic is another field which is going to see transformations with the application of big data analytics in its process
Source: HOBWith the growing awareness about big data and data analytics, it has revolutionized many industries. Logistic is another field which is going to see transformations with the application of big data analytics in its process.
Source: HOBCirca 1997, the reigning world chess champion Garry Kasparov was against an unknown opponent. The opponent was formidable. Garry was not playing a human. He was playing the game with IBM's behemoth supercomputer, Deep Blue.
Source: HOBNow a day's mobile became the central part of everyone's life. This shows marketer to exploit mobile generated data to deliver delightful experience to their customers. The connectivity through the mobile devices using different mobile apps can tell more about consumers' needs, expectations and behaviors.
Source: HOBThere are different methods of doing this. But also, you could upload data into your account or use the measurement protocol to track actually data in your account. There are different hit types that you need to know about and also the scopes of these hit types in order to send the data in and the right way.
Source: HOBCountry's second-largest telecom service provider Vodafone is leveraging Artificial Intelligence (AI) and Big Data technologies to enhance consumer experience. Technologies such as Artificial Intelligence and Big Data are helping to understand customer preferences better and that enable to cater to them accordingly.
Source: HOBData science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. The data science industry's job market is hot today.
Source: HOBCheck out this collection of 9 (plus some additional freebies) must-have skills for becoming a data scientist.
Source: HOBFrom data driven strategies to decision making, the true worth of Big Data has been realized, and has led to opening up of amazing career choices. Check out these 12 interesting careers to explore in Big Data.
Source: HOBThe shift towards data driven approach has created demand for data analyst. The application of big data and data analytics is increasing day by day. So, career in data analytics will provide students with opportunity in different industries.
Source: HOB"Hey Siri, what is IIoT?" Every time you ask Siri, you get an accurate answer. Wonder how your virtual assistant suggests, thinks and talks like a human being? Because it has been taught that way through machine learning.
Source: HOBE-Commerce industry has been growing constantly. The latest technological advancement have certainly accelerated its growth and on its way. The e-commerce industry has been expressively influenced by the rise in mobile internet usage, IoT and big data. Big data can be used for efficient trailing of transactions, sales analysis and for forecast demand and supply
Source: HOBE-Commerce industry has been growing constantly. The latest technological advancement have certainly accelerated its growth and on its way. The e-commerce industry has been expressively influenced by the rise in mobile internet usage, IoT and big data. Big data can be used for efficient trailing of transactions, sales analysis and for forecast demand and supply
Source: HOBArtificial intelligence (AI) and machine learning are transforming the global economy, and companies that are quick to adopt these technologies will take $1.2 trillion from those who don't.
Source: HOBGoogle unveiled an AI that can make reservations over the phone. Has the Turing Test been finally passed?
Source: HOBBig Data is on hype and due to the growing demand; good data is becoming a valuable commodity. Big data is the act of collecting large data sets from traditional and digital sources to identify trends and patterns. That collected information is used by the companies to improve what they know about customer's wants and needs.
Source: HOBIn the digital era, every industry is achieving transformational change. Digitization in each sector is reducing cost of operation and improving the efficiency. Similarly, wealth management is facing with digital disruption that can transform the traditional wealth management.
Source: HOBNot everyone who can talk about "entropy loss" has the engineering skills to back it up. And not every hiring manager knows the difference between clickers and coders.
Source: HOBIncreased user base on digital channels, growing awareness of big data and implementation of data analytics are elevating marketing efforts and its impact on bottom-line. Now, smart marketer use predictive analytics to their grow business.
Source: HOBPython, Scala, R and Java are the major languages for big data, data mining and data science. They all have their own fame. These languages are easy to use and understand obviously they have their own pros as corns as wel
Source: HOBPython, Scala, R and Java are the major languages for big data, data mining and data science. They all have their own fame. These languages are easy to use and understand obviously they have their own pros as corns as wel
Source: HOBIn this feature, we take a look inside the working lives of people whose job titles often warrant the question: 'but what do you actually do?' This week, we speak to Glenn Bunker, data scientist at realestate.com.au.
Source: HOBPart four of my ongoing series about building a data science discipline at a startup. You can find links to all of the posts in the introduction.
Source: HOBEmerging technologies are changing the face of retail operations and commerce. Digital world is continuously posing threat on retail industry as the customers are getting engaged with their mobile phones and expect more convenience.
Source: HOBR is a great choice for manipulating, cleaning, summarizing, producing probability statistics, and so on. In addition, it's not going away anytime soon, it is platform independent, so what you create will run almost anywhere, and it has awesome help resources.
Source: HOBGoogle have recently introduced ML Kit, a machine-learning module fully integrated in its Firebase mobile development platform that is available for both iOS and Android.
Source: HOBData science informs entrepreneurs in a way that listening to their gut just can't.
Source: HOBScientists are paid the big bucks for a reason, and that's because a lot of people don't understand what the heck it is we do. But that's why writing is important. It helps us to understand what we do, and explain it to others so they can understand it, too.
Source: HOBData-driven approach became one of the important feature of modern business organizations where analytics is the key strategy for competitive and sustainable business growth.
Source: HOBMachine Learning (ML) has become massively popular over the last several years. And why... well simply because it works! The latest research has achieved record breaking results, even surpassing human performance on some tasks.
Source: HOBMachine learning can potentially redefine not only how education is delivered, but also nurture quality learning on the student's part. Probably the most important part of the role of machine learning in teaching is customized teaching. With machine learning, we are moving away from the one-size-fits-all methodology.
Source: HOBCynthia Saunders-Cheatham is a senior careers director at Johnson at Cornell. She says more employers want MBAs with data analytics skills
Source: HOBArtificial intelligence and machine learning is no more hype. These technologies are changing our life, the way communicate, the way we do business and the way we live. We can say many examples where AI and machine learning has transformed our daily life.
Source: HOBData Science Congress 2018, an initiative by Aegis School of Data Science and mUni Campus concluded with a bigger bang this year with 2000+ delegates and 100 speakers across industries. DSC 2018 was inaugurated by Shri Vijay Goel, Minister of State for Parliamentary Affairs and Statistics and Programme Implementation, Govt. of India.
Source: HOBIt also brings out the fact that India currently contributes about 10% of the open job openings for data scientists globally, making it the largest data science hub in the world outside the U.S.
Source: HOBData scientists have become the darlings of today's competitive job market. Entry-level salaries can range into six figures, and roughly 700,000 job openings are projected by 2020. There's good reason for this spike in demand, too.
Source: HOBWe probably all know that obesity is becoming a big problem in the developed world and just becoming bigger similiarly data analysis is becoming an important part of the businesses growth. Big data is the act of collecting large data sets from traditional and digital sources to identify trends and patterns. It is very necessary to get understand the structured and unstructured data in order to make right decision for the businesses to grow.
Source: HOBConvolution neural networks (CNNs) are a family of deep networks that can exploit the spatial structure of data (e.g. images) to learn about the data, so that the algorithm can output something useful.
Source: HOBCustomer survey is the primary source of deriving customer feedback for many companies, despite the growth in embracing of other customer feedback sources like social media, call center conversations and emails. It usually contains structured questions, requesting customers to rate their level of satisfaction with their experience. Two common customer surveys are relationship and transactional surveys. The main difference between these two surveys is that relationship surveys measure attitudes about the experience and transactional surveys measure attitudes in the experience. These approaches of the survey are used to help businesses to improve the both strategic and tactical decision-making power.
Source: HOBHarvard hosts some of the most prestigious programs in the world, especially in business and law. So it was big news in the data science industry when the university announced a new master's program in data science in March 2017
Source: HOBNow big data and analytics lies in the heart of every organization but data will act as a garbage for data scientist until and unless they are not able to visualize the data and its impact on key activities and the business outcome.
Source: HOBIn retail business there is some form of typical competition that has been evolved from an longer period in business .The retail business is to identify the needs of the customers in which the best sales can shine out among the competitors . The response of every business folks is to analyze and make comparison to other businesses in your industry. Find if there is something useful to the customers as well as to your business and the good response is to define your brand and consistently communicate your own Unique Selling Proposition. This blog will gives you the 5 strategic ways through which you were able to beat the competition and also remain in business strong and lucrative.
Source: RoosboardReal-time data and analytics are now entering in the field of HR as well. Big data sets are the collections of both sets of structured and unstructured information. However, the command of big data doesn't lies in its size, but lies in that how organizations make use of the resource. Big data comes from many sources and delivers organizations with deep and meaningful insights into consumer and client characteristics as well as internal enterprise performance.
Source: HOBTechnology revolution all over the world are changing the business landscape and making the world more competitive. The data is growing exponentially and the only way to survive is to exploit data intelligence and analytics.
Source: HOBNot that long ago, the concept of "Big Data" was pretty abstract. Few companies considered it feasible to sift through huge sets of data looking for speculative insights.
Source: HOBThe amount of data being collected globally is increasing exponentially. This proves that we are currently in the age of Big Data. Simultaneously, many more related fields like Data Science, Data Intelligence, Artificial Intelligence, Machine Learning, and Deep Learning have also seen a lot of growth and are revolutionizing businesses and industries across the world and making the competitive world. To remain the part of this competitive market organizations lookout for the skilled data scientists and data professionals.
Source: HOBCloud computing permits new level of agility for developers, data scientists and IT by providing a pay as you go model with unlimited scalability and no hardware cost. Analytics is one of the most important business functions that basically fit for public and hybrid clouds. Companies are turning to cloud based analytics for easier access to increasing amounts of data, greater data sharing and collaboration, faster insights and time to value and to reduce operational cost.
Source: HOBIndian Navy is planning to incorporate big data analytics and artificial intelligence into their operational functioning of the forces. In the conference of the commanders they reviewed the Navy's "Mission Based Deployments". The purpose of the review is at maximizing benefits ensured from the deployment of Indian Navy ships and aircraft to the dangerous areas within the Indian Ocean Region.
Source: HOBGoogle Cloud's Asia Pacific MD Rick Harshman says the company's investment into training in India has increased exponentially, with the learner community growing 825% in a year.
Source: HOBThe UK technology sector will have to lose its fear of failure and embrace the artificial intelligence revolution, the Minister for Digital, Culture, Media and Sport has argued.
Source: HOBWhile Bitcoin and Cryptocurrency may have been the first widely known uses of Blockchain technology today, it's far from the only one. In fact, blockchain is revolutionizing every industry. Blockchain is the biggest technological breakthrough since the internet and becomes the most darling topic in the tech sense. There are many blockchain applications but here we talk about that how blockchain is impacting on Big Data.
Source: HOBIndian government departments should take the lead in developing cross-border collaborations with countries leading in Artificial Intelligence (AI) research, industry chamber Assocham said on 17 June.
Source: HOBBased on historical data and accurately predicting some patterns out of it then, Data science comes into the picture. Data Science is the data driven decision making and building business strategies based on data analysis by removing any manual or judgmental error. Data Science is everywhere and here is the rescue for how to be a data scientist. Data scientists basically deal with huge no of both the data whether structured or not structured and the future of data scientists will be data psychology.
Source: HOBEstablishing trust in data is an essential requirement for businesses and entities for whom credible, reliable information is the lifeblood. As enterprises seek to manage data as an asset, it becomes increasingly vital that data sources are trusted and verifiable.
Source: HOBInditex, the world's largest clothing retailerand owner of Zara stocks up on Artificial Intelligence, Big Data and analytics into its business strategy to stay ahead in the race of competition. The biggest fashion retailer is hooking up with tech companies and hiring talent from startups and partnering Analytics and investments, which offers an AI-powered consumer behavior forecast platform.
Source: HOBThe IoT is changing our lives right from how we drive, to how we make purchases and even how we get energy for our home, and what not? So, as you sensed much hype about IoT, let's have a look on what actually is IoT and how does it work?
Source: HOBTransUnion, the Chicago-based credit reporting agency, has funded the creation of a new professor position at the University of Illinois at Chicago in hopes of addressing a growing need for experts in the rapidly expanding field of data science.
Source: HOBBig data is used to identify patterns and trends that can yield powerful insights into human interactions majorly consumer behavior. The data includes demographic, geographic and psychographic attributes collected from diverse sources throughout the consumer cycle as well as from the other field of the individual's life.
Source: HOBThis post examines the evolution of data processing in data lakes, with a particular focus on the concepts, architecture and technology criteria behind them.
Source: HOBUnlike other projects in the organization, AI data-driven products are new for most of the organizations and the best way to go from research to production. Data science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. The data science industry's job market is hot today
Source: HOBScalable Deep Learning services are contingent on several constraints. Depending on your target application, you may require low latency, enhanced security or long-term cost effectiveness. Hosting your Deep Learning model on the cloud may not be the best solution in such cases.
Source: HOBFrom detecting screen cancer to sorting cucumbers to detecting escalators in need of repair, machine learning has granted computer systems entirely new abilities. But how does it really work under the hood? Let's walk through a basic example and use it as an excuse to talk about the process of getting answers from your data using machine learning. Here we learn the art, science and tools of the machine learning.
Source: HOBArtificial Intelligence is the broader umbrella under which Machine Learning and Deep Learning come. Deep Learning and Machine Learning are the subset of each other. It's all about tremendous increase in data so results can't be predicted accurate, hence AI comes into the picture and now it is talk of the town.
Source: HOBData science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. Data science is helpful for the employees to get understand about data and then make it in a proper way so that it can be communicated in a better way which is valuable for the companies.
Source: HOBNumbers don't lie data analytics is on rise soon it will be integrate part of all the organizations. Data science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. Data science helps an employee to understand data and then synthesize it in a proper way so that they can communicate in a better way which is beneficial for the companies
Source: HOBBy now, we all know Machine Learning models makes predictions by learning from the past data available. So here we have input value, a machine learning model based on those inputs understands and gives out the predicted output.
Source: HOBData is everywhere. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. Data science and data analytics, people working in the tech field or other related industries probably hear these terms all the time, often interchangeably. However, although they may sound similar, the terms are often quite different and have differing implications for business. Knowing how to use the terms correctly can have a large impact on how a business is run, especially as the amount of available data grows and becomes a greater part of our everyday lives.
Source: HOBIn 2018, data and data analytics can't be ignored. Data Analytics is quite big buzz these days. Analytics is the combination of analysis and logics. Analytics can't be performed without software's. By applying data analytics we can draw conclusion about the any given set of information.
Source: HOBMachine Learning has become increasingly important today because of the digital transformation of companies leading to the production of massive data of different forms and types, at an ever increasing rate. Due to the advancements in computing technologies and exposure to huge amounts of data, the applicability of machine learning is dramatically increasing.
Source: HOBEnough of talking about languages, we should focus more on the technologies so that we can build apps and can solve different problems. In the fast-changing technological era, one needs to keep themselves to be updated with the technology that is emerging or having great influence in our life. Being updated with trends, market conditions and technology helps in cope up with the changes and move in a right direction
Source: HOBThe basic task of the data science platform is to find and analyze the work that was done in the past, making the job of the data scientists easier.
Source: Zion Market ResearchBots built upon machine learning need long training processes to have the ability to hold a meaningful conversation with real people. Training data become, therefore, a diamond in the rough; all companies need such input for their bots. Until now, this data was generated in a slow manual way. However, speeding up your bot training can now come true with artificially generated data.
Source: BitextWeb scraping is also known as web harvesting or data extraction. It is used for extracting data from the website. Web scraping a web page included fetching and extracting. Fetching is something what we are downloading. So we can say that web crawling is a most important component of web scraping, to fetch pages for later processing. Once fetched, then the extraction takes place. It is also used for contact scrapping, and as a component of applications used for web indexing, web mining, and data mining.
Source: HOBA portfolio of real-world projects is the best way to break into data science. This article highlights the 5 types of projects that will help land you a job and improve your career.
Source: HOBStagraph is a new simple visual interface for R, which focuses on data import, data wrangling and data visualization.
Source: HOBIn a perfect world, data scientists would take subjectivity out of their conclusions when examining findings.
Source: HOBLast Earnings, Twitter Inc. soared the most since its market debut in 2013 after it posted the first revenue growth in four quarters, driven by improvements to its app and added video content that are persuading advertisers to boost spending on the social network - Bloomberg
Source: HOBBusiness intelligence comprises the strategies and technologies used by enterprises for the data analysis of business information. And it provides historical, current and predictive views of business operations.
Source: HOBLeveraging the application of big data, whether it is to improve the process of product development, improve customer retention or work through the data to find new business possibilities organizations are more relying on the expertise of data scientists to sustain, grow and beat their competition. Consequently, as the market for data scientists increases, the system presents an exciting career path for students and existing professional.
Source: HOBFor all those who are searching for job, year 2018 is going to be the year where you can move further in the tech industry and here is the list of top 10 highest paying jobs.
Source: HOBIn our last post, we started using Data Science for Credit Risk Modeling by analyzing loan data from Lending Club.
Source: HOBA guide to making the most out of your data.
Source: HOBNo,but if you have some knowledge about data mining algorithms. That will be beneficial in learning data analytics. Data Analytics is a field demanding a variety of skills. Having knowledge of Hadoop is one of them.
Source: HOBHaving done training and mentoring for quite a while, I noticed something that is not taught in most data science curriculum that I have come across but in my opinion, its an essential business knowledge that the data scientist need.
Source: HOBData science has created so much hype in the world of IT sectors that from big to small companies all are now hiring employees who have knowledge regarding this subject. Data science helps an employee to understand data and then synthesize it in a proper way so that they can communicate in a better way which is beneficial for the companies. Data Science is now know as the sexiest job of the 21st century.
Source: HOBToday, we're going to look at 5 popular clustering algorithms that data scientists need to know and their pros and cons!
Source: HOBIn order for data scientists to be effective at a startup, they need to be able to build services that other teams can use, or that products can use directly.
Source: HOBAnalytic is the interpretation of the data collected. Raw form of data is not of any use. It is important to convert raw data into analytic so that it is easier to find that what is the decision that are to be taken by the use of analytic. Businesses use this analytic for making actionable business analytic that will help them in taking real time actions.
Source: HOBIndustries are now leveraging the chatbots in their daily operating functions thus all the activities are performed by bots with minimum efforts and they can be more focused towards another important task in the organisation. The bots gain the popularity and now they are talk of the town.
Source: HOBMachine Learning is changing the way we do things, and it has started becoming main-stream very quickly. While many factors have contributed to this increase in machine learning, one reason is that it is becoming easier for developers to apply it. And, that is through open source frameworks. Yet most would agree that these days the largest fraction of machine learning researchers come from computer science.
Source: HOBData Analysis and data analytics are often treated as interchangeable terms, but they hold slightly different meanings. Data analysis is the overarching Data Analyst practice that encompasses the use of data analytics tools and techniques to achieve business objectives
Source: HOBInteractivity allows you to embed much more information than in a static visualisation by using tooltips, click-events, ability to filter etc.
Source: HOBAI for Diagnostics, Drug Development, Treatment Personalisation, and Gene Editing
Source: HOBBig Data
Source: HOBAviation Industry is on radar next and it bets on Big Data Analytics. This industry needs to move beyond its present way of working so big data analytics is only key to unlock the potential.
Source: HOBThis post provides an overview of a small number of widely used data visualizations, and includes code in the form of functions to implement each in Python using Matplotlib.
Source: HOBDeepMind and other universities has published many End to End Reinforcement Learning papers that are used for problems that can be solved by a single agent. End to End RL algorithms learns both feature representation and decision making in the network by taking pixels as the input and the controls as output.
Source: HOBApache Spark is an open-source cluster computing framework for real-time processing. It has a thriving open-source community and is the most active Apache project at the moment. Spark provides an interface for programming entire clusters with implicit data parallelism and fault-tolerance.
Source: HOBWe can't expect a simple black or white answer to this question. Whether data or algorithms are more important has been debated at length by experts (and non-experts) in the last few years and the TLDR, is that it depends on many details and nuances that take some time to understand.
Source: HOBLet me start by saying that there is no one way to being a self taught data scientist. You have got to find out what works for you.
Source: HOBFor any tech enthusiast, knowing certain Machine Learning Algorithms and its applications have now become very important. Tech giants like Google, Amazon, Facebook, Walmart are using Machine Learning significantly to keep their business tight enough to compete with their rivalries.
Source: HOBDoctors have always written clinical notes about their patientsâ??-â??originally, the notes were on paper and were locked away in a cabinet. Fortunately for data scientists, doctors now enter their notes in an electronic medical record.
Source: HOBIn finance, data are (very) noisy, and often non-stationary. 'Signals' cannot be split from 'noise' in any unique way, as a matter of principle. This is very different from, say, image processing, where the level of noise can be controlled, at least in principle.
Source: HOBThe growth of data is not going to stop. This will usher in new challenges and opportunities. Below you can find the five hottest big data trends for techies and business.
Source: HOBMachine Learning is overrated in a few ways, both by people with little experience and, more perniciously, people deeply invested in the field. Machine Learning is overrated in a few ways, both by people with little experience and, more perniciously, people deeply invested in the field.
Source: HOBData Science is on the rise, both from a company's perspective and from an employee's perspective. This makes data science a great field to get into at the moment.
Source: HOBMachine learning is an application of artificial intelligence (AI) that provides systems the ability to automatically learn and improve from experience without being explicitly programmed. Machine learning focuses on the development of computer programs that can access data and use it learn for themselves.
Source: HOBPython and R are the two most popular programming languages used extensively by Data analysts and Data Scientists. Both the languages are free and open-source and were developed in the 1900s. However, following are some of the reasons which gives Python edge over R that makes it even more popular among the community.
Source: HOBThe retail industry traditionally has been generating detailed data on consumer behaviour and purchase history through various transactional and customer relationship systems. Exploiting these data to increase basket value and optimize margin remains a challenge with traditional technologies of business intelligence tools and data warehouse architectures.
Source: HOBEssentially, blockchain is a distributed ledger, it's a shared database. Rather than records existing in one location, they are shared across computers in the network all over the world. Built into that ledger is a consensus mechanism that allows anybody to interact or do business with each other and to trust each other without having to go through a central intermediary.
Source: HOBThere is a stark contrast in the demand and supply of data scientists in India
Source: HOBGoogle Cloud announcements bring deep learning and big data analytics beyond data scientists, but enterprises will want more.
Source: HOBAs we know organizations from different domains are investing in big data analytics nowadays by analyzing large data sets to uncover all the hidden patterns unknown correlations, market trends, customer preferences and other useful business information. These analytical findings are helping organizations in more effective marketing, new revenue opportunities and better customer service and they're trying to get competitive advantages over rival organizations and other business benefits. An Apache Spark and Hadoop are the two of most prominent big data frameworks and people often comparing these two technologies.
Source: HOBAI has changed the ways that how all business performs and now artificial intelligence is also changing the way the construction industry does the business. The construction industry has found undeniably a great partner in technology. After a long period of time, now the technology can boost productivity, safety and other critical aspects of business success.
Source: HOBThe analytics play a vital role in every kind of business because it takes every organization to the next level by reducing major stress in business. There are so many analytics tools has been introduced in the market to analyze data rapidly where this leads to tackle so many trolls in business without relying on others. The data Analytics lets you track business such as your store and generates reports that will help you with current updates on your business.
Source: HOBData Scientists are big data wranglers. They consider mass and messy data both structured and unstructured and use their formidable skills and organize them accordingly. They use or apply their analytics power to uncover hidden solutions to business challenges.
Source: HOBMachine Learning plays an integral role in many areas of financial services like from approving the loans, managing assests, minimizing the risk and many more. Machine Learning plays a vital role in fraud detection and protects and thus protect the consumer from the fraudlent activities.
Source: HOBA collection of the most exemplary examples of data visualizations, including Napoleons invasion of Russia and the iconic London Underground map.
Source: HOBThe skills that have remained important are (a) understanding the fundamentals of statistics, optimization, and building quantitative models and (b) understanding how models and data analysis actually apply to products and businesses.
Source: HOBSome algorithms are better at learning with small data while others are preferable for large data. This fact can be understood rigorously through statistical learning theory. Intuitively, algorithm that chooses from a large or complex collection of models needs a larger data set to converge to a model that generalizes well to new data. Thus there is a trade-off between how complex model one wants to be able to learn and how much data and therefore also compute resources that one can provide.
Source: HOBThe challenge of pricing has entered a new era and every industry should learn from what's happening in fashion right now. While competition with Amazon often gets a lot of attention, industry upheaval due to the rise of e-commerce is much broader than that. Retailers need to embrace external market data, in real time, in order to succeed.
Source: HOBBig data and its implications are impacting every business from one-person companies to Fortune 500 enterprises. As data collection, analytics and the interpretation of that data become more readily accessible, they will have an impact on every business in several important ways, regardless of what field you operate in or the size of your business.
Source: HOBBig data and its implications are impacting every business from one-person companies to Fortune 500 enterprises. As data collection, analytics and the interpretation of that data become more readily accessible, they will have an impact on every business in several important ways, regardless of what field you operate in or the size of your business.
Source: HOBThe big fashion brand H&M is betting on the technology Artificial Intelligence and Big Data to regain profitability. All the big brands are now coping with these technologies and maximizing their profit for the business so that they can stay longer in the market.
Source: HOBThe big fashion brand H&M is betting on the technology Artificial Intelligence and Big Data to regain profitability. All the big brands are now coping with these technologies and maximizing their profit for the business so that they can stay longer in the market.
Source: HOBThe amount of data that e-commerce companies collect is changing what we can to do for customers. Increasingly, commercials and ads are targeted to our specific demographics.
Source: HOBEvery company requires different sets of talents, while some jobs require theoretical knowledge; some jobs are based more on your practical knowledge. Same is the case when it comes to getting jobs in data science, getting jobs in data science has it owns unnerving effects. A great portfolio in this case is a good way to showcase your skills what you are good at what your strengths are. This is the best way to show your employers your skills that you have been learning.
Source: HOBThe ever-improving capabilities of big data platforms increasingly create new opportunities for industries with representatives who want to examine analytics to benefit their companies.
Source: HOBAI is not the new technology it is very broad concept and comprises a set of powerful technologies that are emerging under it like deep learning, Reinforcement Learning and Facial Recognition and many more. AI is trending these days and yes it is the future.
Source: HOBIt was declared as the "sexiest job of the 21st century," by Harvard Business Review. While the job has got a great description by Harvard the career path for now is a bit uncertain.
Source: HOBData Scientists is the highest paying and demanding job in the current year. All HR professionals are under pressure to get hired the best data science talent so they can achieve the valuable business insights. According to Harvard Business Review described the role of data scientists as it is the sexiest job of the 21st century.
Source: HOBBlockchain as a buzzword has been already picking up the speed in digital transformation. JD.com China's largest retailer recently announced it is launching a new blockchain technology platform for use by enterprise customers to build, host and use their own blockchain applications. Blockchain has the potential to change the way we interact with each other and with centralized third parties forever, simply because we do not need them with this system.
Source: HOBComputers are always been quicker than humans at consuming, calculating and computing data and artificial intelligence have benefited a boon for our global economy. Combining insights from computer science with cognitive science can advance human thought, shape outcomes in ways that transform the process of human capital development and enhance overall employee contributions and engagement.
Source: HOBHere we get to know that how companies can use systems of insights platform to improve the data sourcing, analysis and insights and how they are managing their data. Recently TIBCO has also published a webinar on know the answer of this question. According to director of analytic strategy, Shawn Rogers that how closed-loop SOI platform offer a continuous learning solutions. All the experts are always in search of getting good or valuable data so that they can get best from that by using their analytical skills.
Source: HOBThe most important thing you must know if you want to get succeed as a Machine Learning engineer is how you should deal with the most precious thing called "DATA". Data analysis is the most important thing that you need to master in order to proceed with Machine learning. Although it may sound surprising, unless you are able to analyze the data correctly, you cannot build a model to use on the data. Now Data analysis is a pretty big field in itself and to work on data analysis.
Source: HOBThe travel industry has changed a lot thanks to the internet. Earlier we used to go to brick-and-mortar travel agents to book a holiday tickets but now the whole scenario is being changed that mostly we book our flights and accommodation online. Internet is changing our lives and now a day's most of the work and personal lives has been digitalized.
Source: HOBThe travel industry has changed a lot thanks to the internet. Earlier we used to go to brick-and-mortar travel agents to book a holiday tickets but now the whole scenario is being changed and we book our flights and accommodation online. Internet is changing our lives and now a day's most of the work and personal lives has been digitalized.
Source: HOBFrom a very generic perspective it does not matter how small or big the company is, it depends on the amount of data the type of data and how are they using the data. As per the recent trend, the need to handle with large amount of data is increased. As per the business requirements we are not able to achieve 100% accuracy when we are dealing with normal data conversions.
Source: HOBLanguage doesn't mean that this is on 5th position is bad or language is at 1st position is the best language. It's just the classification and giving them the number's.
Source: HOBEveryone is talking about artificial intelligence and it is also changing our lives. Business world hasn't fully jumped on board yet with artificial intelligence but very soon most of the organizations are thinking to deploy it and gain its benefits.
Source: HOBMuch of the AI capability working its way into BI tools today isn't entirely new consumer technologies have been successfully implementing them for years. In fact, this is one of the strengths of artificial intelligence when applied to business intelligence the fact that users already understand intuitively how to use products like Google and Amazon making it easier for them to adopt those same technologies and interaction paradigms in BI tools
Source: HOBSolving a complete machine learning problem for the societal benefit
Source: HOBIn data science, computer science and statistics converge. As data scientists, we use statistical principles to write code such that we can effectively explore the problem at hand.
Source: HOBWith traditional TV viewing on the decline, we discuss several ways Big Data and Machine Learning can assist with online video, including redefining user recommendations, improving video buffering and leveraging MAM orchestration.
Source: HOBGain some perspective on the Netflix interview process, and on ways to prepare for just such an industry interview.
Source: HOBI wrote my first line of R code in 2010 for a class at the University of Washington (UW). I was hooked once I realized how much more powerful coding is than spreadsheets. Over the past decade, I witnessed the term 'data science' come into widespread use and saw the rise and fall of buzzwords like big data, business intelligence, analytics, and now artificial intelligence.
Source: HOBGetting the most from our model, figuring out what it all means, and experimenting with new techniques
Source: HOBData science interviews are notoriously complex, but most of what they throw at you will fall into one of these categories.
Source: HOBSometimes you open a big Dataset with Python's Pandas, try to get a few metrics, and the whole thing just freezes horribly.
Source: HOBI would like to live in a world whose systems are build on rigorous, reliable, verifiable knowledge, and not on alchemy. Simple experiments and simple theorems are the building blocks that help understand complicated larger phenomena.
Source: HOBInterviewing is a skill. Here are 10 tips and resources to improve your Data Science interviews.
Source: HOBCheck out part 2 of this excellent series of articles on becoming a data scientist, written by someone who spends their day recruiting data scientists. This installation focuses on learning.
Source: HOBWe examine what's important for data scientists in their careers, including challenging work, networking with peers, foreseeing their career path and creating a good work-life balance.
Source: HOBWhen you think of the perfect data science team, are you imagining 10 copies of the same professor of computer science and statistics, hands delicately stained with whiteboard marker? We hope not!
Source: HOBWhen I heard about the work at UNDP Global Pulse, I thought it was something straight out of a movie. Data science for social impact sounds like the coolesting thing I can do with mathematics.
Source: HOBThe deep learning market is expected to reach the heights by the year ending 2023. Deep Learning is experiencing a rapid increase in its application across various industries. The marketing industry is one of those sectors that are leveraging deep learning for improvements.
Source: HOBIt has been a while even since I posted on Medium. Having been in Data Science for almost half a year, I've made a lot of mistakes and learned from the mistakes along the wayâ?¦ through the hard way.
Source: HOBWe asked our LinkedIn group members what their greatest challenges were to becoming fully fledged data scientists. Some of the most common frustrations were:
Source: HOBAs someone who has been there, I'd like to outline a few practical ideas to help junior data scientists get started at a small software company. The steps were drawn from my personal journey and that of others before me.
Source: HOBData Science, Machine Learning, Artificial Intelligence and data analytics are quite buzzword. No doubt these technologies will transform all the industries but most likely the technology that will change our profession in the short run will be Robotic Process Automation (RPA).
Source: HOBData Science is quite a large and diverse field. As a result, it is really difficult to be a jack of all trades. Traditionally, Data Science would focus on mathematics, computer science and domain expertise.
Source: HOBThe growth and success of the organization totally depend on your ability to collect good amount of data, managing those data which leads into business insights and outcomes. Data is all around only matter is that we have to collect good structured data which is further helpful for the organizations.
Source: HOBDeep Learning is one of the hottest technologies out there. There are many research papers in Deep Learning, and it can be really overwhelming to keep up.
Source: HOBR is an open source language. R is one of the most popular programming languages used for statistical analysis and graphics. It provides the variety of statistical and graphical techniques, and it is highly extensible. This language is used by statisticians and data miners for developing statistical software and data analysis.
Source: HOBHow do you think data science will change over the next 10 years? originally appeared on Quora: the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HOBMachine learning software and artificial intelligence have come a long way since their inception and is only continuing to intensify.
Source: HOBUseful tips to get started writing about your data science projects
Source: HOBMachine learning is having a huge impact in almost all the industries. From Google brain to self-driving cars all are made using a machine learning algorithm. It is currently growing and expanding rapidly and more and more people are learning it.
Source: HOBI was listening to an old episode of Partially Derivative, a podcast on data science and the news. One of the hosts mentioned that we're now living in the "golden age of data science instruction" and learning materials. I couldn't agree more with this statement. Each month, most publishers seem to have another book on the subject and people are writing exciting blog posts about what they're learning and doing.
Source: HOBThis curated list of mindset-changing books will help you become a better Data Scientist
Source: HOBA carefully-curated list of 5 free ebooks to help you better understand the various aspects of what machine learning, and skills necessary for a career in the field.
Source: HOBI hope Part 1 sold you on the idea that version control is a critical tool for managing data science experiments. But the devil is in the details, so let's talk about how to implement version control in a data science project.
Source: HOBWhat You Need to Know about Machine Learning. This eBook offers you the perfect place to lay the foundation for your work in the world of Machine Learning, providing the basic understanding, knowledge, and skills that you can build on with experience and time.
Source: HOBNowadays, there is a huge list of powerful data visualization tools to help you illustrate your ideas, visualize your data, make it talk, share your significant analytics with customers and the global community.
Source: HOBI recently had the chance to use machine learning to address an issue that is at the forefront of the American media, the difficulty of recognizing fake news.
Source: HOBHarvard Business Review has regarded data scientist as the sexiest job of the 21stcentury. In this article, with the assistance of Octoparse V7, one of the best free web data scraping tool, we aggregated the resources and tools that you may need to become a data scientist.
Source: HOBMachine Learning opportunities can be sparse, so when you finally get invited to that long-awaited Machine Learning Interview, you want it to go perfectly. Let me show you how.
Source: HOBThe essential mathematics necessary for Data Science can be acquired with these 15 MOOCs, with a strong emphasis on applied algebra & statistics.
Source: HOBActionable takeaways from a memorable experience As we moved into August and summer begins to wind down, I thought I'd take the time to reflect on my last 12 weeks as a Data Science Intern for Unity Technologies in San Francisco, CA.
Source: HOBAt the moment of writing this post about Data Analytics and Data Science, I am bootstrapping a data literacy consultancy, catering to large enterprises around the globe.
Source: HOBLearn about the various options you have to setup a data science environment with Python, R, Git, and Unix Shell on your local computer.
Source: HOBDid ATMs wipe out the bank tellers? No. Did PDFs wipe out the print industry? No. Did self-service checkout wipe out cashiers? Still no. Still, many jobs are changing thanks to the onslaught of automation and AI, resulting in types of new roles and responsibilities.
Source: HOBMachine learning is an application of artificial intelligence that gives a system an ability to automatically learn and improve from experiences without being explicitly programmed. In this article, we have listed some of the best free machine learning books that you should consider going through (no order in particular).
Source: HOBAnnual salaries for data scientists and machine learning engineers vary significantly across the world.
Source: HOBBig Data Analytics is the perfect solution for the complex problems. Every marketer have to take right decision for their organization and now for all those decisions they need not to be depend on their employees. With the help of big data analytics they can easily come to know about each fact and findings.
Source: HOBCompleting your first project is a major milestone on the road to becoming a data scientist. It's also an intimidating process. The first step is to find an appropriate, interesting data set. You should decide how large and how messy a data set you want to work with; while cleaning data is an integral part of data science, you may want to start with a clean data set for your first project so that you can focus on the analysis rather than on cleaning the data.
Source: HOBHere details of the top 9 data science skills that potential data scientists must have to be competitive in this growing marketplace from the perspective of a recruiter.
Source: HOBIt's often said that data is the new world currency, and the web is the exchange bureau through which it's traded. As consumers, we're positively swimming in data; it's everywhere from labels on food packaging design to World Health Organisation reports.
Source: HOBThe connected devices (The Internet of Things) generate more than 2.5 quintillion bytes of data daily. All this data will significantly impact business processes and the Data Science for IoT will take increasingly central role.
Source: HOBWe have covered all the courses at a beginner level. As i have classified these courses on the basis of difficulty level. Here we have come up with 200 online programming language and computer science courses at an intermediate level.
Source: HOBPreparing for an interview is not easy - naturally, there is a large amount of uncertainty regarding the data science interview questions you will be asked. No matter how much work experience or technical skill you have, an interviewer can throw you off with a set of questions that you didn't expect.
Source: HOBThe field of data analytics is on a rise both in terms of technological growth and popularity.
Source: HOBI came across a challenge on Kaggle called PASSNYC: Data Science for Good. Nelson Mandela was right. Education is a powerful weapon as well as one of life's greatest gifts.
Source: HOBData Science is very hot and demanding field which contains methods and techniques from the other fields like statistics, machine learning, artificial intelligence, Bayesian and many more other fields. The main purpose of these fields is to generate meaningful insights from the collected data.
Source: HOBData visualization is an art which converts numbers into effective knowledge. There are a few programmes out there to help you in data visualization, one of the programmes that help you learn this art is R Programming.
Source: HOBA portfolio of real-world projects is the best way to break into data science. This article highlights the 5 types of projects that will help land you a job and improve your career.
Source: HOBLike other careers that don't come without challenges; data science too has its own challenges to concur.
Source: HOBCrunchbase lists over 5,000 startups who are relying on machine learning for their main and ancillary applications, products and services today.
Source: HOBModern data science emerged in tech, from optimizing Google search rankings and LinkedIn recommendations to influencing the headlines Buzzfeed editors run. But it's poised to transform all sectors, from retail, telecommunications, and agriculture to health, trucking, and the penal system.
Source: HOBDespite the struggles, it is possible to leverage data science and machine learning to scale your business, save time and grow revenue while improving your customers' experience.
Source: HOBSix months ago I quit my job as a junior JavaScript developer and traveled around south-east Asia for five months. Within a week of getting back to the UK, I had three job offers and had accepted an offer for almost double my previous salary. It wasn't easy, but it was worth it. Here's how I did it.
Source: HOBIn this article you will read about 15 Android applications which can be useful for a data scientist or data analyst.
Source: HOBData scientists are the MVPs of any IoT program, but difficulties preparing and leveraging data threaten how quickly they can deliver. Knowing what's lurking in the shadows can streamline the most difficult processes.
Source: HOBTech giant IBM on Wednesday announced a partnership with IIT Bombay to advance artificial intelligence (AI) research in India.
Source: HOBData Science is becoming an integral part of business systems in the modern world primarily because of the increasing dependence on technology.
Source: HOBAs data science and big data get the hype in the industry, handling it is a challenge we need to deal with. Along with all the pros on one side keeping yourself advent with the latest improvements in this field is another issue which bothers us.
Source: HOBThe popularity of data science, big data jobs in India and globally has leapfrogged over the past five years or so. Its successful run in the industry can be attributed to better research, project implementations and the general growth in big data and data science. These developments have called out for techies trying to make a career in data science.
Source: HOBI want to explore the real challenges of data science, based on perspectives from those in the field and those who manage them. However, no career is without its challenges, and data science is not an exception.
Source: HOBThis article list data sets from the data science world that you might find interesting.
Source: HOBWe covered 50 data sets for data scientists that are amusing in part 1. In part two we cover 50 more of those.
Source: HOB50 data sets that data scientist find amusing.
Source: HOBSentiment Analysis examines the problem of studying texts, like posts and reviews, uploaded by users on microblogging platforms, forums, and electronic businesses, regarding the opinions they have about a product, service, event, person or idea. Sentiment Analysis has become a hot-trend topic of scientific and market research in the field of Natural Language Processing (NLP) and Machine Learning.
Source: HOBRaise your hand if you've been caught in the confusion of differentiating artificial intelligence (AI) vs machine learning (ML) vs deep learning (DL)...
Source: HOBHere is a great collection of eBooks written on the topics of Data Science, Business Analytics, Data Mining, Big Data, Machine Learning, Algorithms, Data Science Tools, and Programming Languages for Data Science.
Source: HOBMachine Learning (ML) models are making their way into real-world applications. We all hear news about ML systems for credit scoring, health-care, crime prediction.
Source: HOBWhat do data science, data analytics, and business intelligence mean at Grab and how are they being used? - Wong Mun
Source: HOBWhether you are learning data science for the first time or refreshing your memory or catching up on the latest trends in Data Mining, Data Analysis, these free books will help you excel through self-study.
Source: HOBThis "classic" (but very topical and certainly relevant Big Data) post discusses issues that Big Data can face when it forgets, or ignores applied statistics. As great of a discussion today as it was 2 years ago.
Source: HOBThe Tech Companies are hiring for various positions in India and abroad for Data Science, Artificial Intelligence, Machine Learning. Know the eligibility criteria, job location, and profile. Find out what all is needed to work with the biggest tech-giant in the world
Source: HOBMore free resources and online books by leading authors about data mining, data science, machine learning, predictive analytics, and statistics.
Source: HOBDemand for data scientists is at an all-time high and will continue to be at record levels in the coming years while these professionals become more scarce.
Source: HOBDeep learning, artificial intelligence, and neural networks are challenging new concepts for many, but an intensive short course from ICHEC aims to plug the knowledge gap.
Source: HOBI would never use as a data scientist, or too shallow: not giving me enough information to help me understand how to be effective with Docker quickly.
Source: HOBAre you a hard-core enthusiast of data visualization? Or a beginner, who wants to learn and be able to create more effective visualizations? Check out our list of 35 invaluable books you must read for better visualization.
Source: HOBThere is considerable hype around data science. Websites and social media are flooded with articles on Big Data, Data Science, and Data Analytics. These fields are projected as top fields, while data scientists are considered as saviors of the world and hence are supposed to be highest paid professionals.
Source: HOBData analytics is becoming more vital for businesses, and data scientists are in high demand. But the emerging field is broad, and some companies say they have struggled to find job candidates whose skills fit their needs.
Source: HOBThe world around us is rapidly changing with machines becoming more intelligent. Machines learn from data that we have collected over the years and what we generate each day. Machine learning is not a new concept but was actually coined by Arthur Samuel in the year 1959
Source: HOBData scientists has taken the spot of the number one job in America, and not only for America Data Scientists, data science jobs are amongst the most coveted careers all around the globe.
Source: HOBIBM recently predicted that in the next two years there might be a boost of 28 percent in the number of employed Data scientists.
Source: HOBSocial Media data is the new gold and analytics for the businesses. Social media analytics is an amazing art and science of extracting valuable hidden business insights from the platform called social media.
Source: HOBEmbarking on a journey through the lands of machine learning? Here are few important lessons like Feature Engineering, Model tuning, Overfitting, Ensembling etc. which you should keep in mind along the way.
Source: HOBWith data sciences being the focal point, Entrepreneur India analyses why this new trend is now the essential tool for a majority of smart entrepreneurial solutions.
Source: HOBMost developers have dubbed Python as the Swiss Army Knife in the data science community. It is easy to understand the reason behind it.
Source: HOBData analytics is providing the HR department with new insights into employees and policies in the workplace.
Source: HOBMachine learning has tremendous potential to transform companies, but in practice it's mostly far more mundane than robot drivers and chefs. Think of it simply as a branch of statistics, designed for a world of big data.
Source: HOBHere is a non-exhausting list of curious problems that could greatly benefit from data analysis.
Source: HOBLearn about ten machine learning algorithms that Everyone should know to become a data scientist. Machine learning practitioners have different personalities. While some of them are "I am an expert in X and X can train on any type of data," where X = some algorithm, others are "right tool for the right job" people.
Source: HOBThe average company faces many challenges in getting started with machine learning, including a shortage of data scientists.
Source: HOBA collection of Big Data trends to familiarize yourself with, covering IoT Networks, Artificial Intelligence, Predictive Analytics, Dark Data and more.
Source: HOBOver the last year, I taught myself data science. I learned from hundreds of online resources and studied 6 - 8 hours every day. All while working for minimum wage at a day-care.
Source: HOBA data scientist needs to be Critical and always on a lookout for something that misses others......
Source: HOBIn today's world, whatever your job, having skills and knowledge in Data Science will play a huge role in your career development. For example, big data and analytics gathered from customers allow marketers to build more effective digital marketing campaigns.
Source: HOBUnderstanding data is key to unlocking job opportunities - Harvard Gazette. New course hopes to give students an edge in the job market.
Source: HOBData Scientist is the very demanding role in every big organisation and they have power to unlock the hidden values in the data's. They are very good at data handling and manages data at a very huge scale.
Source: HOBThis list of data analyst interview questions is based on the responsibilities handled by data analysts. However, the questions in a data analytic job interview may vary based on the nature of work expected by an organization.
Source: HOBData Scientists are expected to have a broader set of skills, which is realistically not possible. We believe a time will come when we expect more specialisation and collaboration by data scientists, rather than expecting one person to know everything.
Source: HOB5 years ago the idea of extracting value from data was new to businesses, and that businesses had to be convinced that it was worth their effort to collect data and analyze it for meaningful patterns from which they could benefit.
Source: HOBUntil a few years ago the work of data scientists was isolated and mattered primarily for research and/or R&D purposes. The industry has been extremely thankful for the contributions of these clever individuals but we need them now in the mainstream.
Source: HOBResearchers have looked at ways to utilize Blockchain for improving Artificial Intelligence. Blockchain developers make a good case on why the distributed ledger system is the perfect platform for testing the next generation of developments in AI
Source: HOBThis curated list of mindset-changing books will help you become a better Data Scientist. According to Drew Conway, the Data Science Unicorn is an expert in statistics, programming, and business.
Source: HOBA carefully-curated list of 5 free ebooks to help you better understand the various aspects of what machine learning, and skills necessary for a career in the field.
Source: HOBToday every person is talking about the new business ideas and wants to start thier own dream company. But in Data Science this is little bit different and the success in this filed is mainly driven by knowledge on the particular subject. So for this practice every data scientists should read books and gain the insights.
Source: HOBArguing that India has the potential to position itself among leaders on the global AI map "with a unique brand of #AIforAll", NITI Aayog has decided to focus on five sectors: healthcare, agriculture, education, smart cities and infrastructure, and smart mobility and transportation.
Source: HOBThe 50 companies on the just-released LinkedIn Top Startups list in the U.S. have a whopping 3,069 open jobs, a reflection not only of their ambitions and expansion plans but also an ever-tightening national labor market, with more positions going unfilled.
Source: HOBThere are several ways companies can alleviate the pain and accelerate the data science transition, particularly as it relates to the IT department.
Source: HOBThe advertising world faces the problems of fraud and there is also lack of control over the privacy of data which are the most important thing for every business. So with the help of Blockchain technology these problems can be solved easily.
Source: HOBAbility to write a production-level code is one of the sought-after skills for a data scientist role- either posted explicitly or not. For a software engineer turned data scientist this may not sound like a challenging task as they might have already perfected their skill at developing production level codes and deployed into production several times.
Source: HOBAbility to write a production-level code is one of the sought-after skills for a data scientist role- either posted explicitly or not. For a software engineer turned data scientist this may not sound like a challenging task as they might have already perfected their skill at developing production level codes and deployed into production several times.
Source: HOBArtificial Intelligence allows many applications and services which we use on daily basis. As technological revolutions has become a norm in this era of innovation and Artificial Intelligence plays very crucial role in recent advancements. By using smart applications of artificial intelligence we can save real-time existing process and permitting data-driven decision making on a faster timeline. No one can deny its importance as big companies like Google, Facebook, Amazon and Microsoft are investing in AI technology.
Source: HOBWhat are the most to least important skills, and the types of people who apply for data science jobs. I talked about all of the skills I want in an ideal candidate. But since that candidate doesn't exist, I have to prioritize what attributes the candidates that I hire have.
Source: HOBThe artificial intelligence (AI) industry has been leading the headlines consistently, and for good reason. It has already transformed industries across the globe, and companies are racing to understand how to integrate this emerging technology.
Source: HOBMachine learning and artificial intelligence have multiple applications in various fields. Communications and marketing is no exception. Just like other industries, it can help improve how smoothly everything runs and offer additional insights that were difficult to obtain manually.
Source: HOBIf you're interested in knowing the similarities and differences of Data Science in Latin America countries and others, how to contribute to the data science community.
Source: HOBWe asked our LinkedIn group members what their greatest challenges were to becoming fully fledged data scientists. In response, we rounded up 45 of our favorite ideas from our SuperDataScience podcast guests to (re)activate your career.
Source: HOBData scientists are responsible for unlocking these insights and extracting intelligence which influences our lives, in commerce and at home.
Source: HOBThe aspirants who want to make a scintillating career in the field of data science must be astonished to know this fact. So, a data scientist is a very demanding profession and the USA leads in the market of data science.
Source: HOBI dropped out of a top computer science program to teach myself data science using online resources like Udacity, edX, and Coursera. The decision was not difficult.
Source: HOBI started off by doing online courses for Data Analytics that were either free to access or available at a small cost, all of which were very focused on certain topics of the Data Analytics field.
Source: HOBThe big data analytics technology is a combination of several techniques and processing methods. What makes them effective is their collective use by enterprises to obtain relevant results for strategic management and implementation.
Source: HOBAdvice for young professionals in the non-CS field who wants to learn and contribute to data science/machine learning. Curated from personal experience.
Source: HOBData Science is an exciting field to work in, combining advanced statistical and quantitative skills with real-world programming ability. There are many potential programming languages that the aspiring data scientist might consider specializing in.
Source: HOBPeople often ask me How can I learn Data Analytics? and I often stumble upon this question How to become a Data Analyst on Quora too. The answer is pretty much clearly available all over the internet. The actual issue is not how to become a data analyst but it is if we are ready to become one?
Source: HOBI was asked recently on twitter a question that I've been asked in one form or another several times since I became a Senior Data Visualization Engineer at Netflix.
Source: HOBRegardless of where you stand on the matter of Data Science sexiness, it's simply impossible to ignore the continuing importance of data, and our ability to analyze, organize, and contextualize it.
Source: HOBHow do you get a job in data science? Knowing enough statistics, machine learning, programming, etc to be able to get a job is difficult. One thing I have found lately is quite a few people may have the required skills to get a job, but no portfolio.
Source: HOBAvoiding these common mistakes won't get you hired as Data Scientist. But not avoiding them guarantees your application a one-way ticket to the no pile.
Source: HOBMachine Learning is the term which we have been Hearing Now everywhere. When I Started My ML Journey Back in April 2016 I was like complete Noob having No Idea what ML is I used to Think does ML means that Machine are learning ?
Source: HOBWhen I joined Point Nine two and a half years ago, I knew nothing about Venture Capital. I am looking to learn about Data Science and Machine Learning everything online so I can do it from everywhere.
Source: HOBAll marketers are familiar with the value of monitoring and analyzing web data and analytics. Most of the organizations are using Google Analytics to know the facts and figures of the organization. All extracted data leads to the efficiency, revenue growth and success of a business.
Source: HOBMicrosoft seeks to weave its Data Science, Artificial Intelligence and Core Windows OS components into a single team.
Source: HOBPython continues to take leading positions in solving data science, Machine Learning, Deep Learning, Data Scraping tasks and challenges. Last year we made a blog post overviewing the Python's libraries that proved to be the most helpful at that moment.
Source: HOBAppearing smart should be the top priority of every Data Scientist. This is what drives your career, right? Sarah Cooper's advice on how to appear smart in meetings is a fantastic start, but to succeed among Data Scientists is a whole other ballpark.
Source: HOBThe growth of data and its usage across the industry is hidden from none. During the last decade in general, and the last couple of years in particular, we have seen a major distinction in the roles tasked with crafting and managing data.
Source: HOBData Science has been hailed as the transformative trend that is set to re-wire the industries and re-invent the ways people do things. Products and applications are being developed in agriculture, healthcare, urban planning, trade, commerce, finance, and the possibilities are growing.
Source: HOBWhy Data Analytics? To answer this question, you need first of all few clues about my background. I am Rachid Oukhai, founder of Upsilon, Peculium (Data).
Source: HOBJust because you aspire to be a data scientist doesn't mean you already are qualified to be one.
Source: HOBIn today's world with the introduction of "Internet of Things" and the improvement of "AI Technology" has led to implementation of big data solutions to almost every organization whether small or large organizations. With the help of big data analytics the management can easily take the decision and improve their operational efficiency.
Source: HOBIt isn't easy to find a web developer who hasn't contemplated the idea of switching to machine learning. And they can't be blamed, why deal with monotonous CSS declarations and JavaScript programs when you can challenge yourself with the most interesting problems of artificial intelligence?
Source: HOBMachine Learning algorithms enable software applications to predict more accurately outcomes. Most of the organizations use top machine learning platforms to build the models that can receive data from the various sources.
Source: HOBA year ago, I was a numbers geek with no coding background. After trying an online data science programming course, I was so inspired that I enrolled in one of the best computer science programs in Canada.
Source: HOBClaimed as the sexiest job of the 21st Century here I shall discuss the reasons for my proclamation as a Data Scientist, beyond the hype.
Source: HOBI just started my new job at Airbnb as a data scientist a month ago, and I still feel that I'm too lucky to be here. Nobody knows how much I wanted to join this company.
Source: HOBWho's on top in usage, interest, and popularity? Deep learning continues to be the hottest thing in data science. Deep learning frameworks are changing rapidly. Just five years ago, none of the leaders other than Theano were even around.
Source: HOBAround Data Science Platforms all of its functionalities like data exploration and integration from several sources, coding, model building are executed. Data science platforms are programmed to train and test models and deploy the results to solve real-life business challenges.
Source: HOBIn the ever-changing ecosystem of data science tools, you often find yourself needing to learn a new language in order to keep up with.
Source: HOBAs a data scientist sometime you have to learn those basic mathematics by heart to use or apply the techniques properly, other times you can just get by using an API or the out-of-box algorithm.
Source: HOBWriting a machine learning algorithm from scratch is an extremely rewarding learning experience. We highlight 6 steps in this process.
Source: HOBA year ago, I was a numbers geek with no coding background but wanted to learn data science. After trying an online programming course, I was so inspired that I enrolled in one of the best computer science programs in Canada.
Source: HOBData Scientists are being paid anywhere from around $30K and also paying up to $150k depending on the skills one has and skills he can provide to the job.
Source: HOBTechnological revolutions have become a norm in this era of innovation. Artificial Intelligence offers organizations a competitive advantage. There is also considerable pressure on organizations to go the AI route for fear of losing an edge to competitors.
Source: HOBEveryone wants to develop "skills in Machine Learning and AI" but few are willing to put in the hard yards to develop the foundational understanding of the relevant Math and CS
Source: HOBReading through a data science book or taking a course, it can feel like you have the individual pieces, but don't quite know how to put them together. Taking the next step and solving a complete machine learning problem can be daunting
Source: HOBSometimes you open a big Dataset with Python's Pandas, try to get a few metrics, and the whole thing just freezes horribly. If you work on Big Data, you know if you're using Pandas, you can be waiting for up to a whole minute for a simple average of a Series, and let's not even get into calling apply.
Source: HOBAh, the dreaded machine learning and data science interview. You feel like you know everything until you're tested on it! But it doesn't have to be this way. Over the past few months, I've interviewed with many companies for entry-level roles involving Data Science and Machine Learning.
Source: HOBData visualization is helping companies worldwide to identify patterns, predict outcomes, and improve business returns. Visualization is an important aspect of data analysis. Simply put, data visualization conveys outcomes of tabular or spatial data in a visual format.
Source: HOBSurvey of company leaders shows the vast majority are planning to hire data scientists as economic uncertainty continues.
Source: HOBBig data is used by companies around the world to inform and improve countless business processes, from customer service to marketing campaigns. But the ability to collect and analyze vast amounts of information isn't just useful for external operations; it can help you strengthen your business internally, too.
Source: HOBUnderstanding how artificial intelligence (AI) and machine learning (ML) can benefit your business may seem like a daunting task. But there is a myriad of applications for these technologies that you can implement to make your life easier.
Source: HOBIn general explanation, data science is nothing more than using advanced statistical and machine learning techniques to solve various problems using data and Data Analysis. Yet, it's easier to just dive into applying some fancy machine learning algorithms -and Voila! You got the predictionâ??-â??without first understanding the data.
Source: HOBThere are a lot of computer science graduates and programmers applying for programming, coding, and software development roles at startups like Uber and Netflix; big organizations like Amazon, Microsoft, and Google; and service-based companies like Infosys or Luxsoft, but many of them have no idea of what kind of programming interview questions to expect when you're applying for a job with these companies.
Source: HOBAssembling all the machine learning pieces needed to solve a problem can be a daunting task. In this series of articles, we are walking through implementing a machine learning workflow using a real-world dataset to see how the individual techniques come together.
Source: HOBMost articles about how to complete a data science task usually discuss how to write an algorithm to solve a problem. For example how to classify a text document or forecast financial data.
Source: HOBData science is the top skill to learn in 2019, SlashData said. It noted that 45 percent of developers want to gain expertise in data science and machine learning, with other most-wanted skills including UI design (33 percent) and cloud-native development (25 percent).
Source: HOBMuch of this data is trapped in free-text documents in unstructured form. This data is needed in order to make healthcare decisions.
Source: HOBNow a day's most of the organizations are using Data Science capabilities to shape the next set of products which will be more personalized and dynamic. Businesses across verticals have been sitting on huge quantities of data over the years, in various forms like customer, partner, and internal data.
Source: HOBIf you like a trendy career, you have that opportunity right now and get hired by the big industries. According to the Harvard Business Review, Data Scientists - "The Sexiest Job of the 21st Century". This article talks about the Data Science Courses, Certification, Tutorial and Training for Data Scientists
Source: HOBMany companies want to use Data Science to advance their businesses. They recognize the need of data science as every organization prime goal is to stay competitive and make use of their data, but many of them are unsure of how to get started and don't even have a data scientist team.
Source: HOBMany companies want to use Data Science to advance their businesses. They recognize the need of data science as every organization prime goal is to stay competitive and make use of their data, but many of them are unsure of how to get started and don't even have a data scientist team.
Source: HOBThere are numerous of Big Data tools for data analysis today. Data analysis is the process of inspecting, cleaning, transforming, and modeling data with the goal of discovering useful information, suggesting conclusions, and supporting decision making.
Source: HOBArtificial intelligence is really invaluable right across the spectrum of space problems.
Source: HOBMachine Learning and Data Science are being looked as the drivers of the next industrial revolution happening in the world today. This also means that there are numerous exciting startups looking for data scientists.
Source: HOBDid you know that by 2024 the demand for data scientists is projected to outpace supply by 250,000 jobs?
Source: HOBEveryday the amount of data we produce is very huge in number, but this pace is only accelerating with the growth of the internet of things (IoT). Here is the collection of some favourite stats which create huge amount of data every single day.
Source: HOBExperts have made serious arguments about the use of Big Data in smaller businesses. What these smaller businesses need is a solid plan/strategy according to which they can set up big data in their smaller projects initially.
Source: HOBExperts have made serious arguments about the use of Big Data in smaller businesses. What these smaller businesses need is a solid plan/strategy according to which they can set up big data in their smaller projects initially.
Source: HOBThere's a lot of conversation lately about all the possibilities of machines learning and deep learning to do things humans currently do in our factories, warehouses, offices and homes. While the technology is evolving-quickly-along with fears and excitement, terms such as artificial intelligence, machine learning and deep learning may leave you perplexed.
Source: HOBIn Part-2 collection of 10 Big Data Analysis Tools As Data Visualization and Sentiment Analysis Tools are mentioned. There are numerous of Big Data tools for data analysis today. Data analysis is the process of inspecting, cleaning, transforming, and modeling data with the goal of discovering useful information, suggesting conclusions, and supporting decision making.
Source: HOBScholarship recipients will learn the Machine Learning, Deep Learning framework PyTorch for Artificial Intelligence Research.
Source: HOBWhen it comes to data science and companies one of the big reasons of companies shying away from it is the disconnect organisations and data scientists have when it comes to the work both side priorities.
Source: HOBThe large information that keeps on increasing or the data sets that are complicated need to be processed which is not possible by the traditional applications.
Source: Zion Market ResearchCompanies are aware with the importance of digital data in businesses. All organizations had already started to understand and identify what valuable data they can possess. So they are collecting it, analyzing it and using it to improve their business and operations. They are leveraging machine learning applications that help them in solving complex hurdles.
Source: HOBMany organisations look at Artificial Intelligence as an opportunity to reach to decided aims and goals. A survey conducted recently targeted the question what some executives wanted to achieve through the use of AI in their organisation.
Source: HOBThere are lot of online free resources available from where we can get insights and use that knowledge in our daily routine. But here is the collection of good Big Data books that matches in-depth and comprehensive detail for the readers and these books are selected on following parameters like relevancy, popularity, ratings, publish date and ability to add value to businesses.
Source: HOBData scientists are the only ones who could make sense out of all this gigabytes of data. Now there is data more than there was every before the so there is an immense need of skilled data scientists and data analysis's.
Source: HOBIn Part-2 we have covered 10 Big Data Analysis Tools as Data Visualization and Sentiment Analysis Tools. There are numerous of Big Data tools for data analysis today but here we cover big data analysis tools as data extraction and databases tools.
Source: HOBLearn Logistic Regression first to become familiar with the pipeline and not being overwhelmed with fancy algorithms.
Source: HOBBig data analytics is pouring off real-time sources like sensors and devices. Much of this data requires immediate analysis, for valuable insights while the information is still relevant.
Source: HOBMachine Learning is the very popular technology and its demand is increasing day by day. Now all the organisations are looking for Machine Learning engineers and this is the highest paid profile in the industry. Here we take you through all the aspects of machine learning from simple linear regressions to the latest neural networks, and you will learn not only how to use them but also how to build them from scratch.
Source: HOBI have split this post into four sections: Machine Learning, Natural Language Process, Python, and Math. I have included a sampling of topics within each section, but given the vastness of the material, I can't possibly include every possible topic.
Source: HOBMachine Learning is the subset of Artificial Intelligence which allow systems to perform the specific tasks. Machine Learning and Data Mining work closely as both search through data to look for patterns basically it detects patterns in data and adjust program actions accordingly.
Source: HOBThe two most powerful technologies Data Science and Machine Learning are not only changing the industries but also influencing many movies-makers across the globe. Basically these technologies are penetrating the entire world.
Source: HOBAlgorithms and Data Structure are language agnostic and any programmer worth their salt should be able to convert them to their language of choice. Unfortunately, I have come across several programmers who are REALLY good on programming language e.g. Java, knows minor details of API and language intricacies but has very poor knowledge of algorithms.
Source: HOBThe Internet of Things (IoT) is becoming more important for consumers and, consequently, marketers. As internet-connected devices proliferate, the IoT offers marketers new opportunities and challenges when striving to connect with customers.
Source: HOBWho has had prior stints in retail and education industry talks about the difference between Data Science, Machine Learning, and Big Data - Abhinav Rai, Data Scientist at an upgrade.
Source: HOBMachine Learning and Artificial Intelligence are the two most trending technology everyone want to get learn and get started their career in these field. This field is not only in demand but also the highest paid profile. Here if you are at beginner level to learn machine learning and artificial intelligence follow these videos as you can gain more insights to start your career.
Source: HOBDespite my math background, I've always considered myself first and foremost a consumer researcher who uses data analytics to gain insights into human behavior, and that's what I focus on at Farmers Insurance. Today, if you're a small business owner, you need to get that data just as much as any large corporation. And even if you've always been math-averse, you can learn how to apply analytics to your own business.
Source: HOBIn the Internet of Things, objects have their own IP address, meaning that sensors connected to the web can send data to the cloud on just about anything: how much traffic is rolling through a stoplight, how much water you're using, or how full a trash dumpster is.
Source: HOBJobs requiring machine learning skills are paying an average of $114,000. Advertised data scientist jobs pay an average of $105,000 and advertised data engineering jobs pay an average of $117,000.
Source: HOBIn Part-1 we have covered how to get started with Machine Learning at beginner level. Here in Part-2 we learn machine learning at two other levels. Machine Learning and Artificial Intelligence are the two most trending technology everyone want to get learn and get started their career in these field. This field is not only in demand but also the highest paid profile.
Source: HOBWhether you need to pursue higher education for a job in data science really boils down to your existing skill set and specific goals.
Source: HOBThere has been a rise of big data which has had impacts on social media taking it to all new levels. According to a survey by the year 2020 the collective volume of big data might reach close to 44 trillion gigabytes.
Source: HOBIf you are interested in pursuing a career in Machine Learning and don't know where to start, here's your go-to guide for the best programming languages and skills to learn, interview questions, salaries, and more.
Source: HOBAt this moment the use of machine learning in initial stages of drug development/ discovery has the promise of many uses.
Source: HOBYoutube is a very popular source to educate and entertain people. To learn Artificial Intelligence, Machine Learning and Data Science youtube proved as a good online source by the users. This is great source for educational videos. Now all these technologies are becoming popular day by day and everyone want to learn and get start their career in these fields so they are searching these video channels on youtube.
Source: HOBMachine learning (ML) continues to amaze us with its abilities and is set to transform the economic structure of many industries -- from producers of widgets to financial analysts and health care providers.
Source: HOBDo you know why you're hiring data scientists? A lot of companies feel pressure to hire one, but a lot of companies aren't ready for them or don't know what to do with them, said Stephen Gatchell, head of data governance at Bose Corporation, during a closing keynote panel at the recent Global Artificial Intelligence Conference in Boston.
Source: HOBCompanies need to find a way through the techniques of data visualization and augmented analytics to put it to good use.
Source: HOBData is Gold, The amount of data in the universe is growing at an exponential rate and it is the most important valuable resource not only for individual but for businesses as well. But to get the best value from data you need to be using the best techniques and the best technology.
Source: HOBThese two fields Data Science and Artificial Intelligence are gaining popularity and are in demand and everyone can't afford to spend too much money on books so here is the collection of online free e-books on Machine Learning starting from basics of statistics, proceeding to machine learning foundations and finally advanced level.
Source: HOBThese two fields Data Science and Artificial Intelligence are gaining popularity and are in demand and everyone can't afford to spend too much money on books so here is the collection of online free e-books on Machine Learning starting from basics of statistics, proceeding to machine learning foundations and finally advanced level.
Source: HOBMachine learning is increasingly being deployed in credit card purchase fraud detection, personalized advertising though pattern identification, personalized shopping/entertainment recommendations, to determine cab arrival times, pick-up locations, and finding routes on maps.
Source: HOBArtificial Intelligence is very big term which includes a wide range of other technologies under it. One of those is a natural language processing (NLP), which act a mediator and also create intelligent communication between the man and machines. This can be possible with the help of code, computer linguistics, and computer science to help understand and manipulate human language.
Source: HOBThere is no denying the fact that the use of AI is increasing ever so fast, in a survey conducted recently found that 69% of companies are using AI, machine learning, deep learning, and chatbots.
Source: HOBPython is very popular because of its set of robust libraries that make it such a dynamic and a fast programming language. Python is the fastest-growing programming language in the world, as it increasingly becomes used in a wide range of developer job roles and data science positions across industries.
Source: HOBYou can use Quick Code to discover more free programming language courses based on different technology and programming languages. Take these courses to learn programming, web development, front-end development, mobile application development, data science and start learning.
Source: HOBData Scientists is gaining much attention in the age of analytics at the same point of time the role as a Data Engineers are equally important. Data Scientist filed is evolving and they plays a dual role in the organizations. Data engineers are responsible for the databases, data pipelines, and data services that are prerequisites to data analysis and data science.
Source: HOBMany companies across all verticals are embarking upon a cloud journey and will dip their toes into the proverbial cloud in the next few years. The goal for many is to take advantage of the latest software tools and development methodologies.
Source: HOBIn 2018 it's good time enroll for Data Analytics and it can't be ignored as analytics is the combination of analysis and logics. Data informs a large amount of decisions with strong groundwork rather than just taking shots in the dark.
Source: HOBAfter doing some search and searching for machine learning and data science on the web for hours before writing this article, the most outstanding programming languages related to the topics.
Source: HOBIn 2020, the world is expected to generate 50 times more data than in 2018 and Data Scientist has been voted as the "Sexiest Job" by Harvard Business Review, there is a significant growth in demand for data-savvy professionals in businesses, public enterprises, and several nonprofit organizations.
Source: HOBRecently I decided to get more serious about my machine learning and data science skills. So I decided to practice my skills, which led me to Kaggle.
Source: HOBWhat are employers looking for? Data scientists are expected to know a lot - machine learning, computer science, statistics, mathematics, data visualization, communication, and deep learning. Within those areas, there are dozens of languages, frameworks, and technologies data scientists could learn. How should data scientists who want to be in demand by employers spend their learning budget?
Source: HOBThe data scientist role has been attracting quite a bit of attention and interest--but if you're considering a job in that field, make sure you know what you're taking on.
Source: HOBMachine learning is enabling investors to tap huge data sets such as social media postings in ways that no mere human could. Yet, despite the enormous potential, its record remains mixed.
Source: HOBI analyzed the Stack Overflow survey and found a stark contrast in the salaries of software engineers, youth, interest in new tools, opinions about AI, ethics and more...
Source: HOBIn response to growing demand from employers, San Antonio-based Codeup is launching a new program aimed at preparing people for careers in data science.
Source: HOBBest big data courses listing displays the 'Best Course,' 'Product Description,' 'Rating,' 'Students Enrolled' as well as 'Product's Image' and 'Enroll Now' Button to purchase the Courses from the website for your convenience.
Source: HOBAll data technologies are evolving and getting a lot of hype in the industries. Now most of the organizations are leveraging these technologies ie. Artificial Intelligence, Machine Learning and Data Science. In this article there is a colloection of few artificial Intelligence, Machine Learning and Data Science start-ups in India.
Source: HOBA data scientists has to spend long hours of work in the preparation of the project that phase takes more time than they actually work the one that is shown in newspaper on TV or on the internet.
Source: HOBArtificial Intelligence is changing the way we live. These technologies are on hype as from our phones to devices like Amazon Alexa the artificial intelligence is robot is all around. Google, Netflix, data companies, video games and more all use AI to comb through large amounts of data.
Source: HOBBig data is giving the necessary edge to the organisations; analyzing customer's behaviour, personalizing the customer's experience which directly improves the customers experience and their companies sell improving the company's revenue.
Source: HOBWhile Bitcoin and Cryptocurrency may have been the first widely known uses of Blockchain technology today, The blockchain is gaining popularity only because of its security feature. This is the safe and secure ledger which permits all users to record transactions on system so it will be safe, secure and incorruptible. For this they code in the following best programming languages.
Source: HOBData mining specialists have careers dedicated for better understanding about how to process and draw conclusions from the large amounts of information.
Source: HOBThe University's Data Science Institute recently incorporated the new Center for Data Ethics and Justice - founded by the University's Bioethics Chair Jarrett Zigon - in an effort to ramp up its focus on ethics in analysis and interpretation of data. This partnership has created a new course for graduate data science students that specifically addresses ethical issues related to the handling of data and advancement in technology.
Source: HOBData is not for only Analytics team now as Data Scientists are in demand and data covers all most many roles in an organization and employees need the literacy to handle it effectively. Now in most of the organization the data skills matters a lot because data is gold for all the industries and it is in very huge numbers as well.
Source: HOBThese data sources include social media, online communities, open data sources and more. These data are collected by other companies, each using their unique systems and processes.
Source: HOBSo, you have developed some interest in Python programming language and you have even planned to learn it.
Source: HOBWe believe there are five core "rules" for AI, intended to be used by executives, entrepreneurs, product managers, engineers and data scientists.
Source: HOBPredictive Analytics is a buzzword in today's technical world. Data is in huge quantity and it is very hard to manage those data so predictive analytics come into the picture. Wondering what is it? So, firstly we should start with the meaning of Predictive Analytics that what exactly it is.
Source: HOBPredictive Analytics is a buzzword in today's technical world. Data is in huge quantity and it is very hard to manage those data so predictive analytics come into the picture. Wondering what is it? So, firstly we should start with the meaning of Predictive Analytics that what exactly it is.
Source: HOBPredictive Analytics is a buzzword in today's technical world. Data is in huge quantity and it is very hard to manage those data so predictive analytics come into the picture. Wondering what is it? So, firstly we should start with the meaning of Predictive Analytics that what exactly it is.
Source: HOBComputation power needed to train machine learning and deep learning model on large data sets has always been a huge hindrance for machine learning enthusiast. But with Jupyter notebook which runs on the cloud, anyone who has the passion to learn can train and come up with great results.
Source: HOBData Science is a very huge field and it allows fresher and experienced professionals to kick-start their career in this evolving field. Now HR of the companies are seeking for Data Scientists CV and ready to pay the highest salary. For this most of the people are struggling to get learn about data science.
Source: HOBA study suggests that 58% of organizations have difficulties evaluating the quality of the data and its reliability, raising a big question to the stakeholders.
Source: HOBA collection of useful mobile applications that will help enhance your Popular data science and analytic skills. These free apps can improve your listening abilities, logical skills, basic leadership qualities and more.
Source: HOBData & Data Science is not just for the analytics team anymore. While data scientists are still in demand, the newest conundrum facing today's organizations concerns the rest of the staff. Data isn't used in a vacuum: it touches many other roles, and those employees need the literacy to handle it effectively.
Source: HOBSince the IP in ML/AI cannot reasonably be protected, control and dominance of the data is the remaining strong play. Systems of Intelligence companies are less defensible on this dimension.
Source: HOBI recently changed industries and joined a data science startup company where I'm responsible for building up a data science discipline.
Source: HOBData Science is the very vast term and it specifies that how will the specific method can be applied to data in a business setting. In this way, organizations use mathematics, statistics, predictive analytics, and artificial intelligence (including machine learning) to dig into cumbersome data sets in order to reveal trends. Data science is a product of big data through and through, and can be seen as a direct result of increasingly complex data environments.
Source: HOBAccording to the August 2018 report by the employment-oriented service, data science skills are rising in demand across industries in the U.S.
Source: HOBIf you are new to the world of data science and aren't experienced in either of these languages, it makes sense to be unsure of whether to learn R, SAS or Python.
Source: HOBMastering the little things in Python, NumPy, and Pandas for Data Science. here's the stuff that I'm always forgetting when working with Python, NumPy, and Pandas.
Source: HOBMy Mario Kart reflexes aren't what they used to be, but I am better at data science than I was as a fourth grader, so in this post, I'll use data to finally answer the question "Who is the best character in Mario Kart?"
Source: HOBAs part of my personal journey to gain a better understanding of Neural Network in Python, I've decided to build a Neural Network from scratch without a deep learning library like TensorFlow. I believe that understanding the inner workings of a Neural Network is important to any aspiring Data Scientist.
Source: HOBAre you looking for Free online Data Science courses? Yes, it is possible. Data science plays a very crucial role when it comes to companies growth. Why? because with the help of Data Scientist, a company can know more about the behavior of its users or potential clients (For example - Amazon and Flipkart).
Source: HOBIf you're thinking of learning Python-or if you recently started learning about Python-you may be asking yourself- What exactly can I use Python for?
Source: HOBFor the past year, we have compared nearly 8,800 open source Machine Learning projects to pick Top 30 (0.3% chance).
Source: HOBA year ago, I dropped out of one of the best computer science programs in Canada. I started creating my own data science master's program using online resources.
Source: HOBData analytics is the primary enabler to derive insights and reach out to meaningful truth, resulting in business growth and increased revenue.
Source: HOBIt's been called the New Latin for data science students, and for those who get their degree, it's considered the sexiest job of the 21st century.
Source: HOBData is very important and all the organizations are running towards data to collect it and store it safely. In today's world "Data Is Gold" and data has the potential to turn businesses into revenue. It can be possible only when if we use data is a perfect manner. To analyze and process data models, machine learning is very important. It involves large dynamic datasets to train itself, test and perform predictive and prescriptive analysis.
Source: HOBJava is one of those technologies that have maintained itself over time, it has never gone outdated, and it has been a trustworthy platform. Java has a role which is everywhere even with so many new technologies coming and being around.
Source: HOBMachine learning is undoubtedly on the rise, slowly climbing into 'buzzword' territory. This is in large part due to misuse and a simple misunderstanding of the topics that come with the term.
Source: HOBTechnology Business Research (TBR) recently come out with a report and its headline is, "Winning The Business Of Digital Transformation Services Requires A Process-Led Approach" authored by Sebastian Lagana and Jennifer Hamel. The report is full of good nuggets, but what all professionals especially liked the way that they categorized the 3 phases of Digital Transformation in his report:
Source: HOBMaths is a major part of entering the field of data science but there's a lot more to it than that. When it comes to data science, there is a world of possibilities for those who want to enter the industry.
Source: HOBThe aim of these notebooks is to help beginners/advanced beginners to grasp linear algebra concepts underlying deep learning and machine learning. Acquiring these skills can boost your ability to understand and apply various data science algorithms.
Source: HOBThere is no more field left by Data Science as with the help of Data Analytics the medical science will move to the new level from computerizing medical records to drug discovery and genetic disease exploration. Data Science and medicine are continuously developing and it is important that they both will advance together.
Source: HOBThere is no more field left by Data Science as with the help of Data Analytics the medical science will move to the new level from computerizing medical records to drug discovery and genetic disease exploration. Data Science and medicine are continuously developing and it is important that they both will advance together.
Source: HOBNow every second person wants to start his/her career in Machine Learning, Data Science as all are the highest paid fields. Machine Learning interview questions are the subpart of data science interview and this is the one way to gear up your career as data scientist, machine learning engineer or data engineer and many more.
Source: HOBNow every second person want to start his/her career in Machine Learning, Data Science as all are the highest paid fields. Machine Learning interview questions are the subpart of data science interview and this is the one way to gear up your career as data scientist, machine learning engineer or data engineer and many more.
Source: HOBData science is interdisciplinary science if data analysis uses statistics, algorithm construction, and technology. With the recent trends in Data Science such as machine learning and artificial intelligence, more and more companies want to invest in a Data Science team to better understand their data and make sound decisions.
Source: HOBWith the demand for data scientists exceeding supply by 50 percent to 60 percent, there is a pressing need for more talent in organizations. And you can use that your advantage to establish a wonderful career. So, yes, snagging a data science job is certainly an excellent idea.
Source: HOBMany teams try to start an applied Artificial Intelligence project by diving into algorithms and data before figuring out desired outputs and objectives. Unfortunately, that's like raising a puppy in a New York City apartment for a few years, then being surprised that it can't herd sheep for you.
Source: HOBThere is a ton of stats being thrown around in regards to jobs within the data science field: the number of open positions, high median base salaries, unmet market needs, etc
Source: HOBData science is interdisciplinary science if data analysis uses statistics, algorithm construction, and technology. With the recent trends in Data Science such as machine learning and artificial intelligence, more and more companies want to invest in a Data Science team to better understand their data and make sound decisions.
Source: HOBWorking with technology industry, it's impossible to run away from the vast impact of Artificial Intelligence and Big Data analytics. At the same time it is quite difficult to figure out where one technology begins and the other takes over. While it is clear there is a connection between the two, understanding the manner in which Artificial Intelligence and Big Data work together to solve business and operational problems is a key part of using the technologies effectively.
Source: HOBClearly, a job in Internet of Things can pay well because of the rising demand, but candidates will require a combination of skills to ensure a promising IoT career.
Source: HOBThe just-published 5th-annual Burtch Works Study, Salaries of Data Scientists provides fresh insights into the compensation trends for those holding the sexiest job of the 21st century:
Source: HOBIn 2018, every organization has a data strategy. But what makes a great one? It's harder to tell the difference between a modest success and excellence. Indeed, in data science
Source: HOBArtificial intelligence is no longer just a niche subfield of data science. Tech giants have been using AI for years: Machine learning algorithms power Amazon product recommendations, Google Maps, and the content that Facebook, Instagram, and Twitter display in social media feeds. But William Gibson's adage applies well to AI adoption: The future is already here, it's just not evenly distributed.
Source: HOBArtificial Intelligence, Data Science, and Machine Learning all are very popular technologies in this technological world. All companies are leveraging these technologies and getting best out of it and Tensor Flow, Google's Machine Learning API, which are used to develop the Rank Brain algorithm for Google Search.
Source: HOBThe US could have as many as 250,000 open data science jobs by 2024 (InfoWorld), and the data science skills gap will find companies scrambling to train or hire talent in the coming years. So, the war for data science talent is real.
Source: HOBData is everywhere. It is the most important resource in today's world and every organization is busy in collecting the huge amount of data. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. According to IBM, 2.5 billion gigabytes (GB) of data was generated every day in 2012.
Source: HOBData is everywhere. It is the most important resource in today's world and every organisation is busy in collecting the huge amount of data. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. According to IBM, 2.5 billion gigabytes (GB) of data was generated every day in 2012.
Source: HOBData is everywhere. It is the most important resource in today's world and every organisation is busy in collecting the huge amount of data. In fact, the amount of digital data that exists is growing at a rapid rate, doubling every two years, and changing the way we live. According to IBM, 2.5 billion gigabytes (GB) of data was generated every day in 2012.
Source: HOBData Visualization is a big part of a data scientist's jobs. In the early stages of a project, you'll often be doing an Exploratory Data Analysis (EDA) to gain some insights into your data.
Source: HOBData scientists who find themselves straying too far away from technical work may quickly find their skills out of date and unmarketable in today's climate.
Source: HOBTop 100 Data Science Resources & Tools For 2018 Whether you're just getting started in data science, or are gearing up to get a Masters in Data Science or Business Analytics, there's always more to learn. This guide gathers 2018's top data science resources on the web for learners of all stages.
Source: HOBThis list contains free learning resources for data science, machine learning and big data related concepts, techniques, and applications. Inspired by Free Programming Books.
Source: HOBWe've all gotten those emails at one point or another. You know, the ones that start with "Thank you for your interest" and end with shattered dreams and self-doubt. Okay, maybe that's a bit extreme. Nonetheless, getting job rejections can be difficult.
Source: HOBArtificial Intelligence and its pros and cons have been discussed to no end. Artificial Intelligence isn't a new-age discovery. In India, the Centre for Artificial Intelligence and Robotics (a DRDO Organization) was established as early as 1986. So the question to ask is why all the fuss now?
Source: HOBThe popularity of the blockchain has exploded recently by the fashion effect of ICO's, but all are not worth the time and money to invest in. Let's be aware of the power of this technology and all that one could build of use with it before the crypto trading kills it.
Source: HOBThe popularity of the blockchain has exploded recently by the fashion effect of ICO's, but all are not worth the time and money to invest in. Let's be aware of the power of this technology and all that one could build of use with it before the crypto trading kills it.
Source: HOBHarvard Business Review has regarded data scientist as the sexiest job of the 21st century. One of the best free web data scraping tool, we aggregated the resources and tools that you may need to become a data scientist.
Source: HOBIf you're looking for a change of pace, learning to code in Python might the way forward. Coding offers different opportunities, good pay, and possibly the chance to work from anywhere on your own schedule. Coding is also one those future-proof jobs; until the machines take over anyway.
Source: HOBDeep learning is one of the hottest topics of this industry today. Deep Learning is evolving and it is top of the Data Science world. Deep Learning has led to amazing innovations, incredible breakthroughs, and we are only just getting started. A lot of people carry an impression that deep learning involves a lot of mathematics and statistical knowledge.
Source: HOBWhen an intern asked me what the difference was between artificial intelligence, machine learning, deep learning, and data science. I began explaining, but couldnâ??t quite â?? it felt like I had provided an answer, but didnâ??t do it right.
Source: HOBComputers are good with numbers, but not that much with textual data. One of the most widely used techniques to process textual data is TF-IDF in Python. In this article, we will learn how it works and what are its features.
Source: HOBDifference Between Big Data and Machine Learning- Data drives the modern organizations of the world so don't be surprised if I call this world a data-driven world.
Source: HOBDeirdre Dempsey has decades of experience dealing with data analytics, data science stemming from a strong foundation in mathematics.
Source: HOBIf you want to become more data driven than you should have good understanding of all the languages and you're supposed to be master in Data Science field as well. Building the first data project is actually not that hard only you should know the basic steps and categorize them from raw data to building a machine learning model.
Source: HOBData Scientist, it is one of the professions that have well paid bucks. But most of the time the paychecks comes down to the programming language know to a Data Scientist, while most of the data scientist have skills for all three languages and probably more, it becomes hard to conclude which pays more and has more value to it.
Source: HOBMachine learning offers organizations the potential to make more accurate data-driven decisions and to solve problems. Now organizations are leveraging the machine learning technology and this is not the magic it presents many of the same challenges as other analytics methods.
Source: HOBPeople when talk about Artificial Intelligence, Machine Learning, Automation, Big Data, Cognitive Computing, or Deep Learning they're talking about the ability of machines to learn to fulfill objectives based on data and reasoning. This is tremendously important and is already changing business in practically every industry.
Source: HOBData science is probably the most popular concept nowadays. I believe that many people are looking for an entrance to get inside the industry, and I just happened to read an article that lists some great data science books that may be helpful for you.
Source: HOBDark data is a type of unstructured, untagged and untapped data that is found in data repositories and has not been analyzed or processed. Gartner defines dark data as the information assets organizations collect, process and store during regular business activities, but generally fail to use for other purposes (for example, analytics, business relationships and direct monetizing).
Source: HOBPython is one of the most popular programming languages of recent years. Its clear syntax and readability make it the perfect coding language for beginners. It's forgivable to think that learning Python was essential given its wide usage.
Source: HOBA team of researchers showed how hackers could feasibly use AI to change malware code and bypass cyber security systems as a result. In order to stay ahead, cyber defense systems need to deploy machine learning algorithms that are just as-or even more-powerful and complex.
Source: HOBMachine Learning Algorithms are those that can learn from data and improve from experience, without human intervention. Learning tasks may include learning the function that maps the input to the output, learning the hidden structure in unlabeled data where a class label is produced for a new instance by comparing the new instance (row) to instances from the training data, which were stored in memory.
Source: HOBMost manifestations of AI in business today revolve around machine learning, and the use cases are quite vertically dependent.
Source: HOBMost manifestations of AI in business today revolve around machine learning, and the use cases are quite vertically dependent.
Source: HOBWithout recognizing our weak points, we'll never be able to overcome them. If modern job interviews of Data Scientist have taught us anything, it's that the correct answer to the question. "What's your biggest weakness" is "I work too hard." If we never admit our deficiencies, then we can't take the steps to address them.
Source: HOBOne of the main reasons or a reason that could make blockchains the future of cybersecurity is its mechanism. Its consensus mechanism that necessitates validation from the rest of the nodes in a transaction trail makes it almost impossible for hackers to introduce an alien element without being detected.
Source: HOBStatistics can be a powerful tool when performing the art of Data Science (DS). From a high-level view, statistics is the use of mathematics to perform a technical analysis of data. A basic visualization such as a bar chart might give you some high-level information, but with statistics, we get to operate on the data in a much more information-driven and targeted way. The math involved helps us form concrete conclusions about our data rather than just guesstimating.
Source: HOBMention the word "search" to most laypeople and it conjures images of Google and Bing. Mention it to most data scientists and it usually conjures notions of keywords and text retrieval, and maybe a passing reference to open source projects like Elasticsearch, Apache Solr, of they are particularly well-versed-Apache Lucene.
Source: HOBThese tips should help data scientists work collaboratively to write good code and build models in a way that will be easier to productionize.
Source: HOBEvery year, at the beginning of November, an increased excitement can be felt within the scientific world. It's time the year's Nobel Prize winners are announced.
Source: HOBWhat will be the next thing to revolutionize data science in 2019? originally appeared on Quora: the place to gain and share knowledge, empowering people to learn from others and better understand the world.
Source: HOBArtificial Intelligence (AI) is the mantra of the current era. The phrase is intoned by technologists, academicians, journalists and venture capitalists alike.
Source: HOBArtificial Intelligence is evolving day by day it's an algorithm which could not only learn from experience but could also transfer that knowledge from one very specific task to another. In fact, A.I breakthroughs have become sparse, and seem to require ever-larger amounts of capital, data and computing power.
Source: HOBDeep Learning is a subset of machine learning that deploys algorithms for data processing and imitates the thinking process and even develops abstractions. Deep learning uses layers of algorithms for data processing, understands human speech and recognizes objects visually. Deep Learning is feature extraction which uses an algorithm to automatically construct meaningful features of the data for learning, training and understanding.
Source: HOBWith big data being one of the business intelligence buzzwords of last few years, no wonder that publications on business analytics and dashboard design pile up in bookstores. You must be familiar with those trends and keep up with the developing technology, but who has time to read all those books?
Source: HOBArtifical Intelligence is a collection of data science technologies that at this point in development are not even particularly well integrated or even easy to use. In each of these areas however, we've made a lot of progress and that's caught the attention of the popular press.
Source: HOBArtifical Intelligence is a collection of data science technologies that at this point in development are not even particularly well integrated or even easy to use. In each of these areas however, we've made a lot of progress and that's caught the attention of the popular press.
Source: HOBFor Data Scientists, mistakes help them become sharper and discover new data trends, but that doesn't mean mistakes in Big Data Analytics are not sometimes quite problematic.
Source: HOBI recently joined the Enterprise Insight Studio team at Accenture's global center for innovation in Dublin as an Artificial Intelligence (AI) Software Engineering.
Source: HOBData science is a powerful tool and has the ability to transform the world. We are already seeing massive changes to the way industries work in the Western world and data science is powering that change. Data Scientists want is like any other employees: they want a good salary.
Source: HOBData science is a powerful tool and has the ability to transform the world. We are already seeing massive changes to the way industries work in the Western world and data science is powering that change. Data Scientists want is like any other employees: they want a good salary.
Source: HOBExcel is facing immense competition from challengers such as Google Spreadsheets and well-funded start-ups like Airtable, which are both going after Excel's massive user base of approximately 500 million worldwide. However, making a dent in the enterprise space is huge challenge.
Source: HOBA collection of useful mobile applications that will help enhance your vital data science and analytic skills. These free apps can improve your listening abilities, logical skills, basic leadership qualities and more. Data science and machine learning are evolving with their abilities to transform the world around you.
Source: HOBA Small Real-World Project for Learning Three Invaluable Data Science Skills. As with most interesting projects, this one started with a simple question asked half-seriously: how much tuition do I pay for five
Source: HOBIt is crucial to ask the right questions and/or understand the problem, prior to beginning data analysis. Below is a list of 20 questions you need to ask before delving into the analysis
Source: HOBThis article serves as a quick guide on one of the most important theorems that every data scientist should know, the Central Limit Theorem.
Source: HOBI work at a data science mentorship startup, and I've found there's a single piece of advice that I catch myself giving over and over again to aspiring mentees. And it's really not what I would have expected it to be.
Source: HOBThe list of the most in-demand programming languages in banking isn't all that much of a surprise. Most every developer can rattle off the first three or four and may even get the order right. However, knowing which ones will be utilized the most in the future is a much more difficult task.
Source: HOBPredictions abound about the myriad ways that blockchain will revolutionize the business worldâ??-â??from currency to transportation to banking to law. The most important effect that blockchain will have, however, is the one that gets the least attention.
Source: HOBThe key elements disrupting the insurance industry include the Internet of Things (IoT), wearables, big data, artificial intelligence and on-demand insurance.
Source: HOBAccording to IDC, global spending on Artificial Intelligence (AI) and cognitive systems will reach $19 billion by 2018. This is an increase by approximately 54% over the total amount consumed in 2017. Mergers and acquisitions are constantly taking place. 2017 alone witnessed some huge acquisitions like Yahoo was acquired by Verizon, Apple bought Shazam etc. Top consulting company Deloitte predicted that technology acquisitions will accelerate mergers and acquisitions in 2018.
Source: HOBHackathons have become a new and efficient way of hiring professionals in areas of data science, AI and machine learning, especially for talent-starved mid-sized to smaller companies.
Source: HOBBusinesses have been processing data for ages but the introduction of Internet of Things (IoT) has been a game changer. Data collected through IoT is analyzed using different techniques as compared to that collected traditionally.
Source: HOBA Data Science primary survey was conducted in August through September 2018, where 961 current and past Data Science students from 18 cities in India gave opinions on data science courses they attended.
Source: HOBThe individual Data Science technologies that comes under Artificial Intelligence are all moving forward on different paths at different speeds, but all of those speeds are fast. So before you change careers or decide that your business needs some of that AI let's fly up and see if we can make out a larger pattern that will help us understand where we are and where we're going.
Source: HOB